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Article

Improving the Estimation of Above Ground Biomass Using Dual Polarimetric PALSAR and ETM+ Data in the Hyrcanian Mountain Forest (Iran)

1
Remote Sensing Group, Institute of Geology, TU Bergakademie Freiberg (TUBAF), Bernhard-von-Cotta-Str. 2, D-09599 Freiberg, Germany
2
Remote Sensing Group, Helmholtz Institute Freiberg of Resource Technology, Halsbruecker Str. 34, D-09599 Freiberg, Germany
*
Author to whom correspondence should be addressed.
Remote Sens. 2014, 6(5), 3693-3715; https://doi.org/10.3390/rs6053693
Submission received: 16 December 2013 / Revised: 17 April 2014 / Accepted: 18 April 2014 / Published: 28 April 2014

Abstract

: The objective of this study is to develop models based on both optical and L-band Synthetic Aperture Radar (SAR) data for above ground dry biomass (hereafter AGB) estimation in mountain forests. We chose the site of the Loveh forest, a part of the Hyrcanian forest for which previous attempts to estimate AGB have proven difficult. Uncorrected ETM+ data allow a relatively poor AGB estimation, because topography can hinder AGB estimation in mountain terrain. Therefore, we focused on the use of atmospherically and topographically corrected multispectral Landsat ETM+ and Advanced Land-Observing Satellite/Phased Array L-band Synthetic Aperture Radar (ALOS/PALSAR) to estimate forest AGB. We then evaluated 11 different multiple linear regression models using different combinations of corrected spectral and PolSAR bands and their derived features. The use of corrected ETM+ spectral bands and GLCM textures improves AGB estimation significantly (adjusted R2 = 0.59; RMSE = 31.5 Mg/ha). Adding SAR backscattering coefficients as well as PolSAR features and textures increase substantially the accuracy of AGB estimation (adjusted R2 = 0.76; RMSE = 25.04 Mg/ha). Our results confirm that topographically and atmospherically corrected data are indispensable for the estimation of mountain forest’s physical properties. We also demonstrate that only the joint use of PolSAR and multispectral data allows a good estimation of AGB in those regions.

1. Introduction

In this study, we developed forest AGB models based on ETM+ and ALOS/PALSAR data in the Loveh forest, a mountainous and high biomass forest located in northern Iran. This forest is of interest because it is increasingly fragmented, degraded and converted to other forms of land use [1]. As many other forests in Western and Central Asia it is located in a rugged terrain. To our knowledge, limited studies used remote sensing approaches to investigate the biodiversity, species richness and forest structure in this forest [1,2]. Because of its complexity, no attempt on biomass estimation was performed before. Therefore, the retrieval of biophysical properties over the Loveh forest remains challenging.

Information about forest stand structure and the quantification of AGB are of great importance to assess forest ecosystem productivity, determine carbon budget and support studies of the role of forests in the global carbon cycle [38]. The existing biomass estimation methods that rely on forest inventory data and allometric equations are accurate. However, they have two main disadvantages. First, they are expensive, time-consuming and they cannot provide the spatial distribution of biomass in large areas. Second, forest inventory data and allometric models are rarely available for specific forested environments [9,10].

Optical remote sensing data have proven to be a powerful means for biomass estimation [4,11]. However, the use of these data has some limitations such as model dependency on in situ data as well as low spectral saturation levels [9,12]. Estimation of forest biomass by means of optical remote sensing still remains challenging especially in a forest with dense canopy or complex structure as well as in high relief areas [9,12]. Active remote sensing data like SAR overcome some limitations of optical data. They have the advantage to be weather and daylight independent [9,13]. SAR backscatter correlates with forest biomass, particularly in low-medium biomass forest at lower frequencies like P and L-bands [1417].

Polarized SAR at L-bands (e.g., ALOS/PALSAR) have been successfully used for estimating AGB due to the high sensitivity of the backscattered signal at L-bands to forest structure, probably because of strong interactions with tree trunks and branches [1821]. Usually, L-bands fail for high amounts of biomass (i.e., ca. >100 Mg/ha), because of saturation problems i.e., loss of sensitivity to forest biophysical parameters [19,2123].

Previous studies show that L-band backscattering tends to increase with increasing canopy cover, density and size of the tree [19,2426]. Both co-polarized (HH and VV) and cross-polarized (HV and VH) of L-bands are sensitive to forest biomass [19,27,28]. Usually, cross-polarized backscatter data display a larger dynamic range compared to co-polarized bands [19,25,29].

Several studies investigated the integration of SAR and multispectral remote sensing data for the estimation of forest biophysical properties [6,17,30]. Ahmed et al. [31] observed promising correlations among high AGB values (>100 Mg/ha) and radar backscatter of ALOS/PALSAR and NASA JPL’s Uninhabited Aerial Vehicle Synthetic Aperture Radar (UAVSAR) over the Harvard forest in the United States, despite the fact that saturation of L-band occurs at high AGB. Thus, the joint usage of SAR and optical data for estimating AGB appears promising but still needs more investigation [6]. All of the mentioned studies were not in mountain forests probably because the estimation of forest structure parameters is strongly affected by the relief [5,3235]. Heterogeneous topography causes changes in backscattering mechanisms and induced large surface reflectance variations [5,36]; hence, topographic corrections are necessary for the minimization of such effects [6].

The main objective of this study is to improve the estimation of biomass in rugged terrain forests. We first evaluate the predictive power of ETM+ reflectance and ALOS/PALSAR backscattering intensity. We then show the effect of the terrain corrections and finally develop an approach based on multiple linear regressions in order to jointly use PolSAR and multispectral data and some pertinent derived features such as textures and PolSAR decompositions.

First, we describe the study area as well as field and remote sensing data. Then, we detail the preprocessing procedures and the extraction of specific metrics allowing a better description of forest structures. We then develop the calculation of forest AGB based on the allometric equation and the multiple linear regressions used in this study.

2. Study Area and Data

2.1. Study Area and Field Data

The study area is the Loveh forest, a subset of the Hyrcanian forest that stretches over the northern slopes of the Alborz mountains and the southern coast of the Caspian sea. The natural vegetation is a temperate deciduous broadleaved forest [37,38]. The Loveh forest extends from 37°14′ to 37°24′N and 55°33′ to 55°47′E (comprises ca. 10,683 ha) in the north east of Iran (Figure 1). Based on SRTM data, elevation ranges from 190–1900 m above mean sea level, while slopes vary between 6° and 16° based on shuttle radar topography mission (SRTM) data. Annual mean temperature and precipitation are 12.2 °C and 524 mm [39]. Its main tree species are Quercus castaneafolia, Carpinus betulus, Acer cappadocicum, Cerasus avium, Tilia begonifolia, Diospyros lotus, and Parrotia persica [1,39].

This forest has been treated by the shelter-wood method since 1963. In 2003, the treatment method was replaced by a selective logging method. As a result, the vertical structure of the forest has been modified. Three different stand age classes are found due to these logging activities (Table 1). Preparatory and establishment cuts provided more light and space for new seedlings to grow in managed forest [40]. Therefore, tree densities increase in managed forest compared to natural forest [39]. The maximum tree density belongs to MF2, where the long treatment allows for more seedlings to establish. Because of the existence of some mature trees in MF1 class [41], the tree diameter at breast height (measured at 1.3 m; DBH) and basal area values are higher than MF2 class [39]. However, the largest DBH and basal areas are observed in natural forest (NF) (Figure 2) [39].

Field inventory was carried out in 99 square plots (60 × 60 m) during the summer of 2004 [1]. Handheld GPS measurements were used to register the geographic center of each sample plot. DBH as well as the number of trees were measured and tree species were recorded in each plot. Trees with DBH below 7.5 cm were not included in the survey.

2.2. Remote Sensing Data

The Landsat ETM+ scene used in this study was acquired on 10 September 2007. Six reflective bands consisting of visible and shortwave infrared wavelengths with 30 m spatial resolution were used (Table 2). Thermal and panchromatic bands were not included in this investigation.

ALOS/PALSAR fine beam double polarization (FBD) at HH and HV was acquired on 27 September 2007 (Table 2). The scene was delivered in slant range single look complex (SLC) format (level 1.1). Our first concern was SAR data availability; therefore, there is inevitable time shift between field data and remote sensing data. We accepted this time shift as one of the limitation for developing AGB estimation model. Given our knowledge of forest growth in this area, the delay between remote sensing data acquisition and field survey will not affect biomass prediction.

Digital elevation model (DEM) from SRTM with 3 arc-second spatial resolution (90 m) from U.S. Geological Survey (USGS) was obtained. We then resampled the DEM to 30 m resolution using cubic convolution interpolation (Table 2).

3. Methodology

3.1. Above Ground Biomass Calculation

We used diameter-based allometric equations to calculate forest AGB from DBH data measured in the field (Equation (1), [42]). There is no specific allometric equation for the Hyrcanian forest; therefore, we used a general and not-site specific allometric equation which is adjusted for all tree species based on DBH data [43,44].

AGB = a ( DBH ) b
a = 0.0566, b = 2.663 [42], AGB = the total above ground tree dry biomass (kg/tree), DBH (cm). DBH: ranges from 3.8–63 cm [42].

Once forest AGB was calculated using the DBH of all trees in each plot, we summed up all the values and converted them to Mg/ha. We chose the above formula, which is applicable to various DBH values as in the study area. According to West [45], the scaling coefficient a is not necessarily species and site dependent [43,46]. We chose the value of 0.0566, adopted for all tree species according to [42]. A universal value of around 2.66 has been suggested for the scaling exponent b [43,45]. As the AGB estimation is dependent on allometric equations, we also tested the modeling of DBH.

Table 3 summarizes calculated forest AGB based on field data by using the allometric equation in different forest stand age classes. Plots of natural forest have high AGB. Average values of AGB in these plots are 254.27 Mg/ha. Plots of managed forests have lower value compared to natural forest. Minimum AGB values belong to the MF2, and the AGB values of MF1 remain between these two classes.

3.2. Landsat Processing

First we corrected Landsat scene ETM+ for scan line corrector (SLC) error using one successive scene. The filled scene should be selected in the way that both scenes have the highest possible spectral, temporal and radiometric consistency [47]. The number of needed filled scenes is determined based on the gaps overlapping between scenes [48]. We selected the image acquired on 12 October 2007 as the filled scene, because its acquisition date is close to that of the base image and it is mostly free of clouds. As the corresponding pixels of the base image are scanned on the filled scene, there was no need to use more filled scenes [49]. The correction was done in two steps. First, the two scenes have been aligned to a common frame, then the gaps caused by SLC-off were replaced with the filled scene [50]. After removing the SLC-off error, we calculated at sensor radiance from digital number (DN), taking into account the gain and bias of the sensor. In the next step, radiance was converted to surface reflectance using ATCOR-3 [51] and SRTM. We also evaluated the ATCOR-2 [51] without a DEM, in order to verify the impact of relief on the surface reflectance. In mountainous forests, relief can considerably affect forest reflectance, resulting in spurious relationships between AGB and reflectance [6].

We show the ETM+ reflectance bands before and after topographic correction in Figure 3. Most of the topographic features that can be seen in the original image (Figure 3a) are removed in the corrected image (Figure 3b). Figure 4 shows the ETM+ reflectance before (a) and after (b) topographic correction at the location of field data for different forest classes. The effect of relief and shadows on the surface reflectance is evident. The topographic effects tend to decrease the surface reflectance in both near-infrared (NIR) and shortwave infrared regions (SWIR) due to the shadowing effects introduced by the relief (Figure 4). This is also true for the green spectral region where the reflectance is decreased in the uncorrected scene. At a single perspective, MF2 showed the highest reflectance due to the regeneration effects after logging. The logging has led to the more homogeneous canopy structure in MF2; therefore, it has higher reflectance of red and NIR. On the other hand, shadows of emergent trees from MF1 and NF brought more shadowing effects in the canopy structure; therefore, the signal of red and NIR towards the sensor is decreased [52].

After preprocessing of the ETM+ scene, we calculated the normalized difference vegetation index (NDVI) [53], the principal component analysis (PCA) [54], a tasseled cap transformation (TCT) [55,56] and the gray level co-occurrence matrix (GLCM) [57]. NDVI has been in use for many years to measure and monitor plant growth, vegetation cover and biomass production from multispectral satellite data [53]. However, NDVI loses its sensitivity to dense vegetation because of the saturation in red and near infrared wavelength [11,5860]. PCA allows redundant data to be compacted into fewer bands. The bands of PCA data (components) are non-correlated and independent, and often can be interpreted better than the source data [54]. However, the first few bands account for a high proportion of the variance in the data [61]. TCT brightness, greenness, and wetness define the vegetation information content [55,56] and are calculated by the linear combination of ETM+ bands. GLCM textures describe the spatial variation of the spectral information in the image [57,62]. As many images contain regions characterized by variation in brightness rather than a unique value, textures can improve image classification [57]. In this study, we used texture filters based on co-occurrence measures by the window size of 11 × 11 pixels with horizontal and vertical offset of one. These metrics have been widely used to predict stand forest structure and biomass from remote sensing data [8,59,63].

3.3. ALOS/PALSAR Processing

In order to enhance radiometric resolution and to square the pixels in ground range geometry at similar spatial resolution (i.e., 30 m for Landsat), the amplitude images were multi-looked eight times (i.e., four looks in azimuth and two looks in range) for the dual-polarization scene [64]. After multi-looking, we performed refined Lee filter using a window size of 7 × 7 in order to minimize speckle [65,66]. The performance of the filter and selection of the optimal window size was evaluated with the speckle suppression and mean preservation index (SMPI; [67]).

The intensity scenes were converted in their corresponding backscattering coefficients (Sigma nought (dB); σ°) values (Equation (2), [68,69]). The study area is mountainous, and a strong relief effect is observed. Heterogeneous topography changes the dominant ground-trunk double-bounce scattering mechanism, subsequently the backscatter from forest will be changed [70]. Therefore, we performed radiometric terrain correction to compensate for the ground-topography influence on backscattering coefficient. The corrected backscatter in gamma-nought γ° format can be obtained from the sigma-nought σ° value according to Equation (3) [71,72].

σ ° = 10 × log 10 ( I 2 + Q 2 ) + CF 32.0
CF (calibration factor) = −83 dB, I and Q = the real and imaginary parts of the complex SAR image pixel values
γ ° = σ ° A flat A slope ( cos θ ref cos θ loc ) n
γ° = topographic normalized backscattering coefficient, σ° = radar backscattering coefficient, Aflat = PALSAR pixel size for a theoretical flat terrain, Aslope = true local PALSAR pixel size for the mountain terrain, θloc = local incidence angle, θref = radar incidence angle at the image center.

The exponent n is the optical canopy depth and ranges between 0 and 1. It is a site-specific factor and difficult to obtain in practice, therefore it is set to 1 [19,32,33,73].

We calculated alpha angle (α), entropy (H) and anisotropy (A) according to the decomposition proposed by Cloude and Pottier [74]. This method is based on the extraction of mean diffusion based on eigenvalues/eigenvectors decomposition of the coherence matrix in order to characterize scattering interactions of the beams with the targets [74]. We extracted GLCM SAR textures using a window size of 11 × 11 pixels with horizontal and vertical offset of one. Mean, variance, homogeneity, contrast, dissimilarity, second moment and correlation from both HH and HV polarization bands were extracted.

Figure 5a shows the backscattering in HH and HV polarized bands, and Figure 5b shows the distribution of alpha angle and entropy on the Cloude-Pottier diagram. The results may be affected by the use of dual-polarization data rather than quad-polarization data [13] that were not available for the area. The backscattering values in both HH and HV polarized bands (Figure 5a) tend to decrease from NF to the both managed forest classes due to a more clear forest floor. Less density of trees per ha might enhance forest backscattering (Figure 5a). In general, there is no substantial difference among different forest classes. This backscattering similarity could be resulted from saturation effect in backscattering value, which is known for forest with high AGB value (i.e., ca. > 100 Mg/ha) [19,22,75]. Alpha angle values are below 40 degrees, indicating predominantly surface scattering mechanism [74,76,77].

3.4. Modeling of Forest AGB

Figure 6 illustrates the whole procedure starting from preprocessing of data in order to develop a forest AGB estimation model from multi-source remote sensing data. Various correlations between forest AGB and the reflectance or vegetation indices were found [63,7880]. Also, many studies made use of the relation between SAR backscatter/texture and forest AGB [14,24,30,31,81,82].

We divided the sample plots into training and validation parts. We used the training plots to develop forest AGB estimation models and validation plots to validate the models and calculate RMSE. In each class, around 30% of plots are used as validation data. All models are generated at 95% confidence level (α = 0.05), which means that there is a statistically significant relationship between the variables at 95% confidence interval. In each model, only the parameters with P value ≤ 0.05 are included. These parameters are statistically significant parameters to the model. We developed AGB estimation model with SAR data and uncorrected ETM+ to verify the effect of topography on mountain forest AGB estimation. We also tested the relation of remote sensing dataset and original DBH measurements to overcome the bias induced by introducing empirical allometric equations. Based on the positive results, we then focused on developing AGB estimation models based on corrected remote sensing data. Table 4 summarizes the datasets and significant parameters to AGB models. Models L1–L5 stand for the forest AGB estimation models, which use the corrected ETM+ reflectance, NDVI and GLCM texture. In models P1–P5, PALSAR backscattering and their textures as well as polarimetric features are used. Final model is the forest AGB estimation model based on ETM+, PALSAR and their derivatives’ metrics (Table 4). As we have a large number of independent variables in each model, multicollinearity (a high degree of correlation) may occur among variables. Therefore, we implemented variance inflation factor (VIF) test to detect and remove multicollinearity among variables [83].

Adjusted R2 and P value of each model were calculated. For validation purposes, we calculated RMSE of each model based on validation dataset. RMSE (Equation (4)) is a frequently used measure of differences between values predicted by the model and the observed values.

RMSE = 1 n j = 1 n ( predicted value observed value ) 2

Normally, a model with high adjusted R2 and low RMSE values implies a good fit between the predicted values (calculated from developed models) and observed value in the field. For all models, one-way ANOVA analysis was done at 0.05 significance level [84].

4. Results and Discussion

4.1. Effect of Topographic Correction on Forest AGB Estimation

In Figures 3 and 4, we show the effect of topographic correction on reflectance in ETM+ Landsat bands. Reflectance in green, NIR, and SWIR is remarkably decreased because of relief effects. This will affect the relationship between AGB and reflectance. We evaluated final forest AGB model with uncorrected ETM+ data. Table 5 summarizes the model. Low adjusted R2 (i.e., 0.51), and high RMSE stand for unreliable model. In Figure 7, we plotted the difference between predicted and observed biomass versus the slope for each plot before and after topographic correction. In steeper slope (>10°), the differences are higher compared to gentler slope. The averages of the absolute values of difference between the predicted and observed AGB values for different slope class are reported in Table 6. In all slope groups, the difference is higher for the uncorrected data compared to corrected data. The highest contrast is found in very steep slope (>15°). We concluded that the topographic component has a high influence on AGB estimation in the mountain forest (Table 5). Therefore, we focus on developing AGB estimation model with topographically corrected data.

4.2. Forest AGB Estimation from DBH Data

We developed AGB estimation model with DBH data (Table 7). The high adjusted R2 (i.e., 0.74) and low RMSE (i.e., 3.61 cm) indicate that in case the only DBH data are available, they can be correlated with remote sensing derived variables to estimate forest parameters at plot level. Figure 8 shows the predicted and observed mean DBH per plot.

4.3. Forest AGB Estimation Model Based on Corrected Data

Table 8 summarizes the RMSE and adjusted R2 for all models. In model L1 (Table 4), we use the reflectance of ETM+ to generate the forest AGB estimation model. NDVI and ETM+ spectral bands are used in model L2. In model L3, first and second PCA components as well as ETM+ bands are added to the AGB estimation model (Table 4). However, the attempt to include brightness, greenness and wetness indices to model L4 was ineffective. None of them was statistically significant to the model at 95% confidence level; therefore, these indices were not added to the model (Table 4). Model L5 uses all textures data as well as principal components and reflectance at ETM+ bands (Table 4). Model L1 describes 38% the variability of forest AGB in the study area with the RMSE of 49.1 Mg/ha (Table 8). ANOVA test shows that there is no significant different between L1 and L2 (adjusted R2 of 0.39, RMSE of 49.1 Mg/ha) at 5% significance level (Table 8). This could be because of the saturation of vegetation indices in high biomass forest due to high reflectance [11,58,59,85]. Adding PCA components to the model L3 increases the adjusted R2 to 0.47 and decreases RMSE to 44.0 Mg/ha (Table 8). The result is the same for model L4 (Table 8). Because of the inclusion of GLCM textures, Model L5 shows the best result (adjusted R2 = 0.59; RMSE = 31.5 Mg/ha; Table 8). In heterogeneous forests, texture measures are more sensitive to the canopy structure than spectral reflectance, therefore they correlate better with forest AGB [11,85,86]. Band 4 (NIR) and band 7 (MIR), first principal components as well as variance band 4, variance band 5, correlation band 2 and correlation band 4 are the significant parameters (at 95% interval level) that contribute to the models based on ETM+ data. ANOVA test of models against one another reveals that models L3 and L5 are significantly (at 0.05 significance level) different from model L1.

Results of forest AGB estimation models based on PALSAR backscattering intensity, polarimetric features, and PALSAR texture are as follows. In model P1, we used the backscatter intensity of HH and HV polarization bands (Table 4). In model P2, we also add polarimetric features to the model. SAR textures from HH polarized band are additional input to model P3 compared to model P2. We use HH and HV and SAR textures from HV in model P4. In model P5, we use HH, HV, and polarimetric features as well as the textures of HH and HV (Table 4). The adjusted R2 and RMSE of model P1 are 0.16 and 58.01 Mg/ha, respectively (Table 8). The week correlation between SAR backscattering coefficients and forest AGB is also reported in previous studies [25,81,87]. In model P2, the adjusted R2 is increased to 0.25 and RMSE decrease to 47.0 Mg/ha (Table 8). Model P3 describes 41% the variability of forest AGB in the study area (RMSE = 47.08 Mg/ha). Contrast and mean of HH are the statistically significant HH-texture at 95% confidence level (Table 4). In model P4 (adjusted R2 = 0.25; RMSE = 52.01 Mg/ha), second moment and mean are the statistically significant texture from HV polarized band (Table 4). HH and HV backscattering and entropy as well as contrast HH, mean HH, and second moment HV are the most correlated parameters derived from ALOS/PALSAR data (Table 4) in model P5. This model can describe the 45% variability of the data. RMSE decreases to 43.25 Mg/ha in this model (Table 8). Saturation of L-band that occurs at high AGB can explain the moderate correlation [15,19,22,88,89]. Results from ANOVA test (at 5% confidence interval) among P1–P5 models confirm that all of the models are significantly different from one another. Higher correlation of model P5 compared to the other models based on PALSAR data could be explained by the sensitivity of SAR textures to forest canopy [90]. Our results are in agreement with the finding of previous studies [9093].

In the final model, ETM+ and PALSAR data, NDVI and GLCM textures are used (Table 4). The adjusted R2 of the final model is 0.76 and RMSE is 25.04 Mg/ha (Table 8). Bands 3, 4, 7, PCA-1 as well as HH, HV, and contrast HH significantly correlate with AGB values (Table 9). Many references choose 5 as a threshold for VIF, also the other recommend 10 for each independent variable [94] or average VIF of 6 for the all selected variables in the model [95,96]. We preferred to keep HH—despite the fact that it is highly correlated with HV—because the average VIF of all selected variables is less than 6. Comparison among this model and the other 10 models shows that the joint process of optical and SAR data increase the reliability of model significantly (at 5% significance level). This model benefits from the complementary nature of the spectral information from ETM+ data and volume information from SAR backscattering. The AGB estimation improvement from the inclusion of optical and SAR data is comparable to those reported previously [6,17,30].

4.4. Validation of Forest AGB Models

Predicted versus observed AGB values are plotted in Figure 9 for the selected models. Figure 10 shows the bar plot of adjusted R2 for all models. Model L5 (Figure 9a; Tables 4 and 6) yields moderate results; AGB values between 150 and 210 Mg/ha are modeled better compare to values out of this range. Underestimations are also observed for very high AGB values (>280 Mg/ha). In Figure 9b (model P5; Tables 4 and 6), we observe more overestimating and underestimating compared to model L5. Relatively low adjusted R2 and high RMSE show that dual polarimetric SAR cannot properly predict forest AGB. Final model (Figure 9c) based on multisource data is a well-balanced model. The joint processing of ETM+ and ALOS/PALSAR has two significant effects on the biomass estimation. First, it substantially reduces the RMSE error. Second, it leads to the better prediction of medium AGB values ranges from 80–250 Mg/ha. High ABG values are mostly underestimated.

4.5. Limitation and Sources of Errors

We found a reasonable relationship among ETM+ reflectances, SAR backscattering and field measured AGB. However, there are some limitations and sources of errors to our AGB estimation. These include limitation of field measurements and errors introduced by allometric equation and soil and vegetation moisture.

We used the latest inventory data conducted in the study area and the closest remotely sensed data available. Although differences in time acquisitions may bring additional sources of errors in the retrieval of biomass, the inevitable difference of three years between the in-situ measurements and the remote sensing data used was neglected. The AGB estimations would be improved in case they were coincident. Real AGB can only be measured by destructive sampling that is not available for the study. The calculated AGB values from allometric equations are accounted for as reference value. Calculations based on allometric equations are the best method when destructive sampling is not performed [21], despite introducing errors by using empirical equations [44]. The other deficiency in observed AGB is that trees with DBH <7.5 cm were excluded from field measurement. They contribute slightly to forest AGB and may impact the SAR backscattering [21].

Soil and vegetation moisture related to the precipitation events impact the SAR backscattering and could be a confounding factor in AGB estimation [89]. L-band SAR can penetrate more through vegetation; thus, the soil backscattering is involved in the total backscattering [21,97]. However, in low biomass densities, soil moisture has more effect on SAR backscattering, since radar signal can penetrate through the trees and hit the surface [15,21].

5. Recommendations and Conclusions

This research was the first attempt to apply synthetic aperture radar (SAR) data for above ground dry biomass (AGB) estimation in the Hyrcanian forest. The multiple linear regression procedure clearly demonstrates the feasibility of the joint usage of ETM+ and Advanced Land-Observing Satellite/Phased Array L-band Synthetic Aperture Radar (ALOS/PALSAR) data for the AGB estimation in mountainous and high biomass forests. We conclude that relief influences the forest reflectance and backscatter in mountainous areas; therefore, topographic correction is essential for modeling forest AGB in those regions. Using non-topographically corrected data, the AGB prediction model captured only 51% of the biomass variability (RMSE = 37.53 Mg/ha). Adding topographic corrections improved the AGB estimation by up to 25%. Biomass estimation based on ETM+ data shows that gray level co-occurrence matrix (GLCM) textures correlate more with AGB than NDVI and principal component analysis (PCA). Our results showed that the coefficient of correlation could be increased by 0.12 when including texture information. Polarized L-band SAR features alone correlate weakly with AGB (adjusted R2 = 0.45, RMSE= 43.25 Mg/ha). However, SAR data can be used alternatively when optical data is not available or if the region is covered by clouds. Forest AGB can be modeled more accurately with the joint usage of optical and SAR data (adjusted R2 = 0.76, RMSE = 25.04 Mg/ha) rather than independently (adjusted R2 ≤ 0.59)

The methodology can be used to produce forest AGB maps in mountainous terrain that can be difficult to obtain with more traditional techniques. Biomass estimations can help managers to measure forest productivity and give them a better vision for further activities. Additional research will explore the influence of full polarimetric L-band SAR data. Although no spaceborne L-band SAR is currently active, some missions such as ALOS/PALSAR-2, Multi-Application Purpose SAR (MAPSAR) and Deformation, Ecosystem Structure and Dynamics of Ice (DESDynI) are planned [20]. Our further research will also focus on the performance of other regression models (e.g., robust regression) for estimating forest AGB based on multisource remote sensing data.

Acknowledgments

The first author was supported from the German Academic Exchange Service (DAAD) and the International Association of Mathematical Geosciences (IAMG). SAR data was provided under Cat.1-Proposal 6242 through the European Space Agency (ESA) Third Party Mission. The Landsat/ETM+, SRTM data and MODIS global land cover product (MOD12) were obtained from USGS. For the correction of SLC-off error, a frame and fill tool—programmed by Richard Irish from NASA Goddard Space Flight Center—was used. We also wish to thank Veraldo Liesenberg (Unicamp/FAPESP) for his contributory feedback on the manuscript. We would like to thank Shaban Shataee from the forestry department, Gorgan University of Agriculture and Natural Science in Iran for providing us with in-situ datasets; without his aid this research would not have been possible.

Author Contributions

Sara Attarchi prepared and accomplished the study. She also wrote the manuscript. Richard Gloaguen outlined the research, and supported the analysis and discussion. He also supervised the writing of the manuscript at all stages.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Mohammadi, J.; Shataee, S. Possibility investigation of tree diversity mapping using Landsat ETM+ data in the Hyrcanian forests of Iran. Remote Sens. Environ 2010, 114, 1504–1512. [Google Scholar]
  2. Mohammadi, J.; Shataee, S.; Habashi, H.; Amiri, M. Effect of shelterwood logging on diversity of tree species in the Loveh Forest, Gorgan. Iran. J. For. Poplar Res 2008, 16, 241–250. [Google Scholar]
  3. Department of Environment, Iran. Forth National Report to the Convention on Biological Diversity; Department of Environment, Iran, 2010. Available online: https://www.cbd.int/doc/world/ir/ir-nr-04-en.pdf (accessed on 18 April 2014).
  4. Main-Knorn, M.; Moisen, G.G.; Healey, S.P.; Keeton, W.S.; Freeman, E.A.; Hostert, P. Evaluating the remote sensing and inventory-based estimation of biomass in the western Carpathians. Remote Sens 2011, 3, 1427–1446. [Google Scholar]
  5. Soenen, S.A.; Peddle, D.R.; Hall, R.J.; Coburn, C.A.; Hall, F.G. Estimating aboveground forest biomass from canopy reflectance model inversion in mountainous terrain. Remote Sens. Environ 2010, 114, 1325–1337. [Google Scholar]
  6. Lu, D. The potential and challenge of remote sensing-based biomass estimation. Int. J. Remote Sens 2006, 27, 1297–1328. [Google Scholar]
  7. Palacios-Orueta, A.; Chuvieco, E.; Parra, A.; Carmona-Moreno, C. Biomass burning emissions: A review of models using remote-sensing data. Environ. Monit. Assess 2005, 104, 189–209. [Google Scholar]
  8. Zheng, D.; Rademacher, J.; Chen, J.; Crow, T.; Bresee, M.; Le Moine, J.; Ryu, S.-R. Estimating aboveground biomass using Landsat 7 ETM+ data across a managed landscape in northern Wisconsin, USA. Remote Sens. Environ 2004, 93, 402–411. [Google Scholar]
  9. Kronseder, K.; Ballhorn, U.; Böhm, V.; Siegert, F. Above ground biomass estimation across forest types at different degradation levels in Central Kalimantan using LiDAR data. Int. J. Appl. Earth Obs. Geoinf 2012, 18, 37–48. [Google Scholar]
  10. Amini, J.; Sumantyo, J.T.S. SAR and Optical Images for Forest Biomass Estimation. In Biomass—Detection, Production and Usage; Matovic, D., Ed.; InTech: Rijeca, Croatia, 2011; pp. 53–74. [Google Scholar]
  11. Eckert, S. Improved forest biomass and carbon estimations using texture measures from WorldView-2 satellite data. Remote Sens 2012, 4, 810–829. [Google Scholar]
  12. Gibbs, H.K.; Brown, S.; Niles, J.O.; Foley, J.A. Monitoring and estimating tropical forest carbon stocks: Making REDD a reality. Environ. Res. Lett 2007. [Google Scholar] [CrossRef]
  13. Liesenberg, V.; Gloaguen, R. Evaluating SAR polarization modes at L-band for forest classification purposes in Eastern Amazon, Brazil. Int. J. Appl. Earth Obs. Geoinf 2013, 21, 122–135. [Google Scholar]
  14. Le Toan, T.; Beaudoin, A.; Riom, J.; Guyon, D. Relating forest biomass to SAR data. IEEE Trans. Geosci. Remote Sens 1992, 30, 403–411. [Google Scholar]
  15. Luckman, A.; Baker, J.; Kuplich, T.M.; da Costa Freitas Yanasse, C.; Frery, A.C. A study of the relationship between radar backscatter and regenerating tropical forest biomass for spaceborne SAR instruments. Remote Sens. Environ 1997, 60, 1–13. [Google Scholar]
  16. Castel, T.; Guerra, F.; Caraglio, Y.; Houllier, F. Retrieval biomass of a large Venezuelan pine plantation using JERS-1 SAR data. Analysis of forest structure impact on radar signature. Remote Sens. Environ 2002, 79, 30–41. [Google Scholar]
  17. Cutler, M.; Boyd, D.; Foody, G.; Vetrivel, A. Estimating tropical forest biomass with a combination of SAR image texture and Landsat TM data: An assessment of predictions between regions. ISPRS J. Photogramm. Remote Sens 2012, 70, 66–77. [Google Scholar]
  18. Wolter, P.T.; Townsend, P.A. Multi-sensor data fusion for estimating forest species composition and abundance in northern Minnesota. Remote Sens. Environ 2011, 115, 671–691. [Google Scholar]
  19. Santoro, M.; Fransson, J.E.; Eriksson, L.E.; Magnusson, M.; Ulander, L.M.; Olsson, H. Signatures of ALOS PALSAR L-band backscatter in Swedish forest. IEEE Trans. Geosci. Remote Sens 2009, 47, 4001–4019. [Google Scholar]
  20. Cartus, O.; Kellndorfer, J.; Rombach, M.; Walker, W. Mapping canopy height and growing stock volume using Airborne Lidar, ALOS PALSAR and Landsat ETM+. Remote Sens 2012, 4, 3320–3345. [Google Scholar]
  21. Robinson, C.; Saatchi, S.; Neumann, M.; Gillespie, T. Impacts of spatial variability on aboveground biomass estimation from L-band radar in a temperate forest. Remote Sens 2013, 5, 1001–1023. [Google Scholar]
  22. Imhoff, M.L. Radar backscatter and biomass saturation: Ramifications for global biomass inventory. IEEE Trans. Geosci. Remote Sens 1995, 33, 511–518. [Google Scholar]
  23. Saatchi, S.; Marlier, M.; Chazdon, R.L.; Clark, D.B.; Russell, A.E. Impact of spatial variability of tropical forest structure on radar estimation of aboveground biomass. Remote Sens. Environ 2011, 115, 2836–2849. [Google Scholar]
  24. Ranson, K.; Sun, G. Mapping biomass of a northern forest using multifrequency SAR data. IEEE Trans. Geosci. Remote Sens 1994, 32, 388–396. [Google Scholar]
  25. Rignot, E.; Way, J.; Williams, C.; Viereck, L. Radar estimates of aboveground biomass in boreal forests of interior Alaska. IEEE Trans. Geosci. Remote Sens 1994, 32, 1117–1124. [Google Scholar]
  26. Harrell, P.; Bourgeau-Chavez, L.; Kasischke, E.; French, N.; Christensen, N, Jr. Sensitivity of ERS-1 and JERS-1 radar data to biomass and stand structure in Alaskan boreal forest. Remote Sens. Environ 1995, 54, 247–260. [Google Scholar]
  27. Richards, J.A.; Sun, G.-Q.; Simonett, D.S. L-band radar backscatter modeling of forest stands. IEEE Trans. Geosci. Remote Sens 1987, 487–498. [Google Scholar]
  28. Craig Dobson, M.; Ulaby, F.T.; Pierce, L.E. Land-cover classification and estimation of terrain attributes using synthetic aperture radar. Remote Sens. Environ 1995, 51, 199–214. [Google Scholar]
  29. Wang, Y.; Davis, F.; Melack, J.; Kasischke, E.; Christensen, N., Jr. The effects of changes in forest biomass on radar backscatter from tree canopies. Int. J. Remote Sens 1995, 16, 503–513. [Google Scholar]
  30. Rauste, Y. Multi-temporal JERS SAR data in boreal forest biomass mapping. Remote Sens. Environ 2005, 97, 263–275. [Google Scholar]
  31. Ahmed, R.; Siqueira, P.; Bergen, K.; Chapman, B.; Hensley, S. A. Biomass Estimate Over the Harvard Forest Using Field Measurements with Radar and Lidar Data. Proceedings of 2010 IEEE International Geoscience and Remote Sensing Symposium (IGARSS), Honolulu, HI, USA, 25–30 July 2010; pp. 4768–4771.
  32. Thiel, C.J.; Thiel, C.; Schmullius, C.C. Operational large-area forest monitoring in Siberia using ALOS PALSAR summer intensities and winter coherence. IEEE Trans. Geosci. Remote Sens 2009, 47, 3993–4000. [Google Scholar]
  33. Kim, C. Quantataive analysis of relationship between ALOS PALSAR backscatter and forest stand volume. J. Mar. Sci. Technol 2012, 20, 624–628. [Google Scholar]
  34. He, Q.-S.; Cao, C.-X.; Chen, E.-X.; Sun, G.-Q.; Ling, F.-L.; Pang, Y.; Zhang, H.; Ni, W.-J.; Xu, M.; Li, Z.-Y.; et al. Forest stand biomass estimation using ALOS PALSAR data based on LiDAR-derived prior knowledge in the Qilian Mountain, western China. Int. J. Remote Sens 2011, 33, 710–729. [Google Scholar]
  35. Sun, G.; Ranson, K.J.; Kharuk, V.I. Radiometric slope correction for forest biomass estimation from SAR data in the Western Sayani Mountains, Siberia. Remote Sens. Environ 2002, 79, 279–287. [Google Scholar]
  36. Liu, W.; Song, C.; Schroeder, T.A.; Cohen, W.B. Predicting forest successional stages using multitemporal Landsat imagery with forest inventory and analysis data. Int. J. Remote Sens 2008, 29, 3855–3872. [Google Scholar]
  37. Mosadegh, A. Silviculture; Tehran University Publications: Tehran, Iran, 1996. [Google Scholar]
  38. Marvie Mohadjer, M. Silviculture; Tehran University Publications: Karaj, Iran, 2005. [Google Scholar]
  39. Amiri, M.; Dargahi, D.; Azadfar, D.; Habashi, H. Comparison of structure of the natural and managed Oak (Quercus castaneifolia) stand (shelter wood system) in Forest of Loveh, Gorgan. J. Agric. Sci. Nat. Resour 2009, 15, 45–56. [Google Scholar]
  40. Amiri, M.; Habashi, H.; Azadfar, D.; Soleymani, N. Comparison of regeneration density and species diversity in managed and natural stands of Loveh Oak forest. J. Agric. Sci. Nat. Resour 2008, 28, 44–53. [Google Scholar]
  41. Mohammadi, J.; Shataei, S.; Yaghmaei, F.; Salman Mahini, A. Forest stand age classification using Landsat ETM+ data. J. Wood For. Sci. Technol 2009, 16, 43–59. [Google Scholar]
  42. Martin, J.G.; Kloeppel, B.D.; Schaefer, T.L.; Kimbler, D.L.; McNulty, S.G. Aboveground biomass and nitrogen allocation of ten deciduous southern Appalachian tree species. Can. J. For. Res 1998, 28, 1648–1659. [Google Scholar]
  43. Zianis, D.; Mencuccini, M. On simplifying allometric analyses of forest biomass. For. Ecol. Manag 2004, 187, 311–332. [Google Scholar]
  44. Ahmed, R.; Siqueira, P.; Hensley, S.; Bergen, K. Uncertainty of forest biomass estimates in north temperate forests due to allometry: Implications for remote sensing. Remote Sens 2013, 5, 3007–3036. [Google Scholar]
  45. West, G.B.; Brown, J.H.; Enquist, B.J. A general model for the structure and allometry of plant vascular systems. Nature 1999, 400, 664–667. [Google Scholar]
  46. Niklas, K.J.; Midgley, J.J.; Enquist, B.J. A general model for mass-growth-density relations across tree-dominated communities. Evol. Ecol. Res 2003, 5, 459–468. [Google Scholar]
  47. Boloorani, A.D.; Erasmi, S.; Kappas, M. Multi-source remotely sensed data combination: Projection transformation gap-fill procedure. Senors 2008, 8, 4429–4440. [Google Scholar]
  48. Gap Phase Statistic Calculator. Available online: https://landsat.usgs.gov/gap_phase_tool.php (accessed on 4 April 2014).
  49. Chen, J.; Zhu, X.; Vogelmann, J.E.; Gao, F.; Jin, S. A simple and effective method for filling gaps in Landsat ETM+ SLC-off images. Remote Sens. Environ 2011, 115, 1053–1064. [Google Scholar]
  50. Tutorial for Using the NASA Gap Filling Software; Available online: biodiversityinformatics.amnh.org/file.php?file_id=619 (accessed on 4 April 2014).
  51. Richter, R.; Schläpfer, D. Atmospheric/Topographic Correction for Satellite Imagery; 565-02/11; DLR-German Aerospace Center: Wessling, Germany, 2011; p. 202. [Google Scholar]
  52. Liesenberg, V.; Boehm, H.-D.V.; Gloaguen, R. Spectral variability and discrimination assessment in a tropical peat swamp landscape using CHRIS/PROBA data. GISci. Remote Sens 2010, 47, 541–565. [Google Scholar]
  53. Tucker, C.J. Red and photographic infrared linear combinations for monitoring vegetation. Remote Sens. Environ 1979, 8, 127–150. [Google Scholar]
  54. Jensen, J.R. Introductory Digital Image Processing: A Remote Sensing Perspective; Prentice-Hall Inc: Upper Saddle River, NJ, USA, 1996. [Google Scholar]
  55. Crist, E.P.; Kauth, R. The tasseled cap de-mystified. Photogramm. Eng. Remote Sens 1986, 52, 81–86. [Google Scholar]
  56. Crist, E.P.; Laurin, R.; Cicone, R.C. Vegetation and Soils Information Contained in Transformed Thematic Mapper Data. Proceedings of IGRASS’86 Symposium, Zurich, Switzerland, 8–11 September 1986; ESA Publ. Division: Noordwijk, The Netherlands, 1986; pp. 1465–1470. [Google Scholar]
  57. Haralick, R.M.; Shanmugam, K.; Dinstein, I.H. Textural features for image classification. IEEE Trans. Syst. Man Cybern 1973, 3, 610–621. [Google Scholar]
  58. Huete, A.R.; Liu, H.; van Leeuwen, W.J. The Use of Vegetation Indices in Forested Regions: Issues of Linearity and Saturation. Proceedings of 1997 IEEE International Geoscience and Remote Sensing Symposium, Singapore, 3–8 August 1997; European Space Agency Publications Division: Noordwijk, The Netherlands, 1997; pp. 1966–1968. [Google Scholar]
  59. Lu, D.; Mausel, P.; Brondızio, E.; Moran, E. Relationships between forest stand parameters and Landsat TM spectral responses in the Brazilian Amazon Basin. For. Ecol. Manag 2004, 198, 149–167. [Google Scholar]
  60. Mutanga, O.; Skidmore, A.K. Narrow band vegetation indices overcome the saturation problem in biomass estimation. Int. J. Remote Sens 2004, 25, 3999–4014. [Google Scholar]
  61. Taylor, P.J. Quantitative Methods in Geography: An Introduction to Spatial Analysis; Houghton Mifflin Boston: Boston, MA, USA, 1977. [Google Scholar]
  62. Holden, J. An Introduction to Physical Geography and the Environment; Pearson Education: Upper Saddle River, NJ, USA, 2005. [Google Scholar]
  63. Sader, S.A.; Waide, R.B.; Lawrence, W.T.; Joyce, A.T. Tropical forest biomass and successional age class relationships to a vegetation index derived from Landsat TM data. Remote Sens. Environ 1989, 28, 143–198. [Google Scholar]
  64. Lee, J.-S.; Hoppel, K.W.; Mango, S.A.; Miller, A.R. Intensity and phase statistics of multilook polarimetric and interferometric SAR imagery. IEEE Trans. Geosci. Remote Sens 1994, 32, 1017–1028. [Google Scholar]
  65. Lee, J.-S. Refined filtering of image noise using local statistics. Comput. Graph. Image Process 1981, 15, 380–389. [Google Scholar]
  66. Cantalloube, H.; Nahum, C. How to Compute a Multi-look SAR Image? Proceedings of SAR Workshop: CEOS Committee on Earth Observation Satellites Working Group on Calibration and Validation, Toulouse, France, 26–29 October 1999; Harris, R.A., Ouwehand, L., Eds.; European Space Agency: Paris, France, 2000; pp. 635–640. [Google Scholar]
  67. Shamsoddini, A.; Trinder, J.; Wagner, W.; Székely, B. Image texture preservation in speckle noise suppression. Int. Arch. Photogramm. Remote Sens. Spat. Inf. Sci 2010, 38, 239–244. [Google Scholar]
  68. Shimada, M.; Isoguchi, O.; Tadono, T.; Isono, K. PALSAR radiometric and geometric calibration. IEEE Trans. Geosci. Remote Sens 2009, 47, 3915–3932. [Google Scholar]
  69. Lavalle, M.; Wright, T. Absolute radiometric and polarimetric calibration of ALOS PALSAR products. Available online: http://earth.eo.esa.int/pcs/alos/palsar/articles/Calibration_palsar_products_v13.pdf (accessed on 23 April 2014).
  70. Folkesson, K.; Smith-Jonforsen, G.; Ulander, L.M. Model-based compensation of topographic effects for improved stem-volume retrieval from CARABAS-II VHF-band SAR images. IEEE Trans. Geosci. Remote Sens 2009, 47, 1045–1055. [Google Scholar]
  71. Ulander, L.M. Radiometric slope correction of synthetic-aperture radar images. IEEE Trans. Geosci. Remote Sens 1996, 34, 1115–1122. [Google Scholar]
  72. Castel, T.; Beaudoin, A.; Stach, N.; Stussi, N.; Le Toan, T.; Durand, P. Sensitivity of space-borne SAR data to forest parameters over sloping terrain. Theory and experiment. Int. J. Remote Sens 2001, 22, 2351–2376. [Google Scholar]
  73. Lucas, R.; Armston, J.; Fairfax, R.; Fensham, R.; Accad, A.; Carreiras, J.; Kelley, J.; Bunting, P.; Clewley, D.; Bray, S. An evaluation of the ALOS PALSAR L-band backscatter—Above ground biomass relationship Queensland, Australia: Impacts of surface moisture condition and vegetation structure. IEEE J. Sel. Top. Appl. Earth Obs. Remote Sens 2010, 3, 576–593. [Google Scholar]
  74. Cloude, S.R.; Pottier, E. An entropy based classification scheme for land applications of polarimetric SAR. IEEE Trans. Geosci. Remote Sens 1997, 35, 68–78. [Google Scholar]
  75. Watanabe, M.; Shimada, M.; Rosenqvist, A.; Tadono, T.; Matsuoka, M.; Romshoo, S.A.; Ohta, K.; Furuta, R.; Nakamura, K.; Moriyama, T. Forest structure dependency of the relation between L-band and biophysical parameters. IEEE Trans. Geosci. Remote Sens 2006, 44, 3154–3165. [Google Scholar]
  76. Ouarzeddine, M.; Belhdj Aissa, A.; Souissi, B.; Belkhider, M.; Boulahbal, S. Polarimetric Classification Using the Cloude/Pottier Decomposition. Proceedings of the 2nd International Workshop POLINSAR 2005, Frascati, Italy, 17–21 January 2005; Lacoste, H., Ed.; ESA Publications Division: Noordwijk, The Netherlands, 2005. [Google Scholar]
  77. Lonnqvist, A.; Rauste, Y.; Molinier, M.; Hame, T. Polarimetric SAR data in land cover mapping in boreal zone. IEEE Trans. Geosci. Remote Sens 2010, 48, 3652–3662. [Google Scholar]
  78. Roy, P.; Ravan, S.A. Biomass estimation using satellite remote sensing data—An investigation on possible approaches for natural forest. J. Biosci 1996, 21, 535–561. [Google Scholar]
  79. Steininger, M. Satellite estimation of tropical secondary forest above-ground biomass: Data from Brazil and Bolivia. Int. J. Remote Sens 2000, 21, 1139–1157. [Google Scholar]
  80. Hall, R.; Skakun, R.; Arsenault, E.; Case, B. Modeling forest stand structure attributes using Landsat ETM+ data: Application to mapping of aboveground biomass and stand volume. For. Ecol. Manag 2006, 225, 378–390. [Google Scholar]
  81. Dobson, M.C.; Ulaby, F.T.; LeToan, T.; Beaudoin, A.; Kasischke, E.S.; Christensen, N. Dependence of radar backscatter on coniferous forest biomass. IEEE Trans. Geosci. Remote Sens 1992, 30, 412–415. [Google Scholar]
  82. Kuplich, T.; Salvatori, V.; Curran, P. JERS-1/SAR backscatter and its relationship with biomass of regenerating forests. Int. J. Remote Sens 2000, 21, 2513–2518. [Google Scholar]
  83. Belsley, D.; Kuh, E.; Welsch, R. Regression Diagnostics: Identifying Influential Data and Sources of Collinearity; Wiley & Sons Inc.: Hoboken, NJ, USA, 1980. [Google Scholar]
  84. Chambers, J.M.; Hastie, T. Statistical models in S; Chapman & Hall/CRC: Pacific Grove, CA, USA, 1992. [Google Scholar]
  85. Lu, D. Aboveground biomass estimation using Landsat TM data in the Brazilian Amazon. Int. J. Remote Sens 2005, 26, 2509–2525. [Google Scholar]
  86. Sarker, L.R.; Nichol, J.E. Improved forest biomass estimates using ALOS AVNIR-2 texture indices. Remote Sens. Environ 2011, 115, 968–977. [Google Scholar]
  87. Foody, G.M.; Green, R.; Lucas, R.; Curran, P.; Honzak, M.; Do Amaral, I. Observations on the relationship between SIR-C radar backscatter and the biomass of regenerating tropical forests. Int. J. Remote Sens 1997, 18, 687–694. [Google Scholar]
  88. Lucas, R.M.; Mitchell, A.L.; Rosenqvist, A.; Proisy, C.; Melius, A.; Ticehurst, C. The potential of L-band SAR for quantifying mangrove characteristics and change: case studies from the tropics. Aquat. Conserv.: Mar. Freshw. Ecosys 2007, 17, 245–264. [Google Scholar]
  89. Morel, A.C.; Saatchi, S.S.; Malhi, Y.; Berry, N.J.; Banin, L.; Burslem, D.; Nilus, R.; Ong, R.C. Estimating aboveground biomass in forest and oil palm plantation in Sabah, Malaysian Borneo using ALOS PALSAR data. For. Ecol. Manag 2011, 262, 1786–1798. [Google Scholar]
  90. Sarker, M.L.R.; Nichol, J.; Ahmad, B.; Busu, I.; Rahman, A.A. Potential of texture measurements of two-date dual polarization PALSAR data for the improvement of forest biomass estimation. ISPRS J. Photogramm. Remote Sens 2012, 69, 146–166. [Google Scholar]
  91. Kuplich, T.; Curran, P.; Atkinson, P. Relating SAR image texture to the biomass of regenerating tropical forests. Int. J. Remote Sens 2005, 26, 4829–4854. [Google Scholar]
  92. Luckman, A.; Frery, A.; Yanasse, C.; Groom, G. Texture in airborne SAR imagery of tropical forest and its relationship to forest regeneration stage. Int. J. Remote Sens 1997, 18, 1333–1349. [Google Scholar]
  93. Champion, I.; Dubois-Fernandez, P.; Guyon, D.; Cottrel, M. Radar image texture as a function of forest stand age. Int. J. Remote Sens 2008, 29, 1795–1800. [Google Scholar]
  94. Kutner, M.H.; Nachtsheim, C.J.; Neter, J.; Li, W. Applied Linear Statistical Models; McGraw-Hill/Irwin: New York, NY, USA, 2004. [Google Scholar]
  95. Pedhazur, E.J. Multiple Regression in Behavioral Research: Explanation and Prediction; Harcourt Brace College Publishers: San Diego, CA, USA, 1997. [Google Scholar]
  96. Ender, P.B. Applied Categorical & Nonnormal Data Analysis. Available online: http://www.philender.com/courses/categorical/notes2/collin.html (accessed on 1 April 2014).
  97. Wang, X.; Ge, L.; Li, X. Pasture monitoring using SAR with COSMO-SkyMed, ENVISAT ASAR, and ALOS PALSAR in Otway, Australia. Remote Sens 2013, 5, 3611–3636. [Google Scholar]
Figure 1. Location of the study area (red rectangle) in northern Iran. The land cover map is reclassified from 500 m MODIS land cover map.
Figure 1. Location of the study area (red rectangle) in northern Iran. The land cover map is reclassified from 500 m MODIS land cover map.
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Figure 2. The distribution of (a) mean DBH and (b) number of trees per ha for the field plots located in three different forest stand age classes.
Figure 2. The distribution of (a) mean DBH and (b) number of trees per ha for the field plots located in three different forest stand age classes.
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Figure 3. A pseudo-color composite of the Landsat-7/ETM+ (R4:G3:B2) acquired on 10 September 2007 (a) before and (b) after topographic correction.
Figure 3. A pseudo-color composite of the Landsat-7/ETM+ (R4:G3:B2) acquired on 10 September 2007 (a) before and (b) after topographic correction.
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Figure 4. Landsat surface reflectance based on the location of field data (a) before and (b) after topographic correction.
Figure 4. Landsat surface reflectance based on the location of field data (a) before and (b) after topographic correction.
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Figure 5. (a) HH-HV backscattering (b) alpha-entropy of Cloude-Pottier decomposition on the location of field data for different forest classes. (Z6 and Z9 are dominated by surface scattering, Z2, Z5 and Z8 by volume scattering and Z1, Z4 and Z7 by multiple scattering mechanisms. Z3 is non-feasible region).
Figure 5. (a) HH-HV backscattering (b) alpha-entropy of Cloude-Pottier decomposition on the location of field data for different forest classes. (Z6 and Z9 are dominated by surface scattering, Z2, Z5 and Z8 by volume scattering and Z1, Z4 and Z7 by multiple scattering mechanisms. Z3 is non-feasible region).
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Figure 6. Flowchart of mountain forest AGB estimation model.
Figure 6. Flowchart of mountain forest AGB estimation model.
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Figure 7. Distribution of difference between predicted and observed forest AGB values versus slopes of each plot (a) before (b) and after topographic correction.
Figure 7. Distribution of difference between predicted and observed forest AGB values versus slopes of each plot (a) before (b) and after topographic correction.
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Figure 8. Predicted versus observed forest mean DBH values (validation dataset). Each point represents one field plot. The light blue polygon shows the area of 95% confidence interval and black solid line represents the regression line.
Figure 8. Predicted versus observed forest mean DBH values (validation dataset). Each point represents one field plot. The light blue polygon shows the area of 95% confidence interval and black solid line represents the regression line.
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Figure 9. Predicted versus observed forest AGB (validation dataset); (a) Model L5: based on spectral reflectance and textures of ETM+ scene; (b) Model P5: based on backscattering and derived parameters of ALOS/PALSAR; and (c) Final model: based on ETM+ and ALOS/PALSAR data. Each point represents one field plot. The light blue polygon shows the area of 95% confidence interval and black solid line represents the fitted line.
Figure 9. Predicted versus observed forest AGB (validation dataset); (a) Model L5: based on spectral reflectance and textures of ETM+ scene; (b) Model P5: based on backscattering and derived parameters of ALOS/PALSAR; and (c) Final model: based on ETM+ and ALOS/PALSAR data. Each point represents one field plot. The light blue polygon shows the area of 95% confidence interval and black solid line represents the fitted line.
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Figure 10. Bar plot of R2 (refer to Table 4).Note: *Final: AGB estimation model based on uncorrected data (Section 4.1).
Figure 10. Bar plot of R2 (refer to Table 4).Note: *Final: AGB estimation model based on uncorrected data (Section 4.1).
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Table 1. Characteristics of three selected forest types.
Table 1. Characteristics of three selected forest types.
Forest Stand AgeCharacteristics
Natural forest (NF)The forest has not been affected by any treatment. Trees have closed crown cover. This forest has more developed vertical stratification, and fewer trees per ha compared to managed forests. It is also composed of trees with larger DBH [39].
Managed forest1 (MF1) (5–25 years)Forest area, which is managed by shelter-wood method. Preparatory cut, seed cut, and establishment cut were done according to a 25-year time plan. The removal cut still is not done, so some trees with large DBH can be found [39].
Managed forest2 (MF2) (25–45 years)Forest area which is also managed by shelter-wood method for 45 years. Preparatory cut, seed cut as well as establishment and removal cut were done. In average, density of trees (number per ha) is higher, and trees’ DBH are smaller compared to other classes [39].
Table 2. Remote sensing data used in this study.
Table 2. Remote sensing data used in this study.
Satellite SensorImage Acquisition DateSpatial Resolution
Landsat7/ETM+10 September 2007Six visible and shortwave infrared bands with 30 m spatial resolution
ALOS/PALSAR27 September 2007 L-band HH and HVWith 12.5 m pixel spacing (resample to 30 m)
DEM90 m spatial resolution (resample to 30 m)
Table 3. Summary of field forest AGB (Mg/ha).
Table 3. Summary of field forest AGB (Mg/ha).
Forest Stand AgeMeanSTDRange
Natural forest254.2729.9176.34–343.38
Managed forest 1195.9344.7488.22–297.44
Managed forest 2142.1432.7364.45–267.84
Table 4. Datasets and significant parameters for different AGB estimation models.
Table 4. Datasets and significant parameters for different AGB estimation models.
ModelDatasetsSignificant Parameters * (P ≤ 0.05)
LandsatL1ETM+ bandsb3, b4, b7
L2ETM+ bands, NDVIb4, b7, NDVI
L3ETM+ bands, NDVI, PCAb7, PCA-1, PCA-2
L4ETM+ bands, NDVI, PCA, TCTb7, PCA-1, PCA-2
L5ETM+ bands, NDVI, PCA, TCT, GLCM texturesb7, b4, PCA-1, variance b4, variance b5, correlation b2, correlation b4

PALSARP1HH, HVHH, HV
P2HH, HV, polarimetric featuresHH, HV, entropy
P3HH, HV, polarimetric features, texture HHHH, HV, entropy, contrast HH, mean HH
P4HH, HV, polarimetric features, texture HVHH, HV, entropy, mean HV
P5HH, HV, polarimetric features, texture HH, texture HVHH, HV, entropy, contrast HH, mean HH, second moment HV

Landsat & PALSARFinalETM+ bands, PALSAR polarized bands, their derived featuresb3, b4, b7, PCA-1, HH, HV, contrast HH

Note:*Significant parameters; parameters with P values ≤ 0.05. There are statistically significant relationships between these parameters and AGB at 95% confidence interval.

Table 5. Statistics summary of forest AGB estimation model based on uncorrected ETM+ data.
Table 5. Statistics summary of forest AGB estimation model based on uncorrected ETM+ data.
ModelDatasetSignificant Parameters * (P0.05)RMSEAdj. R2P Value **
AGB model (Before topographic correction)Landsat bands, Landsat textures, PALSAR bands and their texturesb4, mean b5, contrast b5, HH, HV, alpha, mean HH37.53 (Mg/ha)0.510.0000

Note:*Significant parameters; parameters with P values ≤ 0.05. There are statistically significant relationships between theses parameters and AGB at 95% confidence interval.**When the P value is ≤ 0.05, there is a statistically significant relationship between the variables at 95% confidence level.

Table 6. Average of difference between predicted and observed AGB (Mg/ha) values before and after topographic correction.
Table 6. Average of difference between predicted and observed AGB (Mg/ha) values before and after topographic correction.
SlopeDifference between Predicted and Observed AGB (Mg/ha) Values

Before Topographic CorrectionAfter Topographic Correction
6°–10°32.725.18
10°–15°28.2218.99
>15°48.0521.52
Table 7. Statistics summary of DBH estimation model.
Table 7. Statistics summary of DBH estimation model.
ModelDatasetSignificant Parameters * (P0.05)RMSEAdj. R2P Value **
DBH modelLandsat bands, Landsat textures, PALSAR bands and their texturesb3, b4, b7, correlation b4, variance b3, second moment HH,3.61 (cm)0.740.0000

Note:*Significant parameters; parameters with P values ≤ 0.05. There are statistically significant relationships between theses parameters and AGB at 95% confidence interval.**When the P value is ≤ 0.05, there is a statistically significant relationship between the variables at 95% confidence level.

Table 8. Forest AGB estimation model parameters.
Table 8. Forest AGB estimation model parameters.
ModelRMSEAdj. R2P Value *ANOVA **
LandsatL149.10.380.0000-
L249.10.390.0000-
L344.00.470.0000**
L444.00.470.0000**
L531.50.590.0000**

PALSARP158.010.160.0002**
P247.00.250.0000**
P347.080.410.0000**
P452.10.250.0010**
P543.250.450.0000**

Landsat & PALSARFinal25.040.760.0000**

Note:*When the P value is ≤ 0.05, there is a statistically significant relationship between the variables at 95% confidence level.**Represents the results of ANOVA test; it shows the models that are statistically different at 95% confidence level.

Table 9. Statistics summary of final forest AGB model.
Table 9. Statistics summary of final forest AGB model.
Significant ParametersCoefficientP ValueVIF
Band 321.390.001.66
Band 44.850.043.13
Band 7−18.10.002.34
PCA-114.80.021.29
HH−6.670.0211.99
HV2.870.059.5
Contrast HH−6.630.012.39

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Attarchi, S.; Gloaguen, R. Improving the Estimation of Above Ground Biomass Using Dual Polarimetric PALSAR and ETM+ Data in the Hyrcanian Mountain Forest (Iran). Remote Sens. 2014, 6, 3693-3715. https://doi.org/10.3390/rs6053693

AMA Style

Attarchi S, Gloaguen R. Improving the Estimation of Above Ground Biomass Using Dual Polarimetric PALSAR and ETM+ Data in the Hyrcanian Mountain Forest (Iran). Remote Sensing. 2014; 6(5):3693-3715. https://doi.org/10.3390/rs6053693

Chicago/Turabian Style

Attarchi, Sara, and Richard Gloaguen. 2014. "Improving the Estimation of Above Ground Biomass Using Dual Polarimetric PALSAR and ETM+ Data in the Hyrcanian Mountain Forest (Iran)" Remote Sensing 6, no. 5: 3693-3715. https://doi.org/10.3390/rs6053693

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