1. Introduction
In arid and semi-arid regions of the world, vegetation usually appears as patches due to the environmental constraints such as a limited water supply, soil salinization or local microtopography. According to size, area and spatial distribution, vegetation patches are characterized as banded (i.e., tiger vegetation) or spotted (i.e., leopard vegetation) [
1]. Compared with banded vegetation patterns, the spotted vegetation pattern has not as yet attracted equivalent attention [
2]. Patchy vegetation patterns have been reported in America, Africa, Asia, Australia, and Spain [
3,
4,
5,
6,
7,
8,
9,
10,
11,
12,
13,
14,
15,
16], where the range of annual precipitation is from 50 to 750 mm, and appears to be unrelated to any particular soil type or plant species [
14]. In general, it is considered as the result of plant-oil feedback occurring in water-limited regions [
12,
14,
15,
16]. Although there is an ongoing debate concerned with the mechanisms for the formation of patchy vegetation patterns, vegetation patchiness can generally increase primary production, influence biodiversity, affect surface runoff and soil erosion, and suggest key indices for ecosystem function and for the management of arid and semi-arid lands [
1,
16,
17,
18]. Mapping vegetation patches is, therefore, important for a better understanding of patch patterns, mechanisms for formation and evolution, and function. Moreover, such mapping can provide valuable information for the development of adaptive vegetation recovery and re-establishment strategies for increasingly degraded ecosystems in arid and semi-arid zones [
19].
Remote sensing is an effective technology for the creation of vegetation maps. Due to the relatively small size, vegetation patch mapping most frequently involves the application of aerial photographs and high-resolution satellite images. Aerial photographs have long been recognized as an important data source for mapping patchy vegetation patterns since aerial photographs first became accessible in the early 1940s [
2,
20]. The circular patches (with an area of approximately <90 m
2 to >3000 m
2) of
Spartina patens on Cox Island, Siuslaw Estuary, Oregon were mapped using sequential air photos (scale 1:1500) from 1939 to 1980 and their area determined by planimetry [
9]. Vegetation patches (with spatial scales of 2–3 m) on the eastern flanks of Mt. Carmel were derived from orthorectified aerial photographs with a 75 cm pixel resolution using a Maximum Likelihood Classifier (MLC) [
20]. The fairy circles (with an average diameter of 5–8 m) of Kaokoland, Namibia were detected from a set of aerial photographs (Scale 1:78,000) [
21]. Two-dimensional wavelet combined with a 1 m aerial photograph was used to identify individual juniper trees (crown diameter of 2–9 m) and thereby to analyze the encroachment of juniper plants on to a sagebrush steppe landscape [
22]. A set of historical aerial photographs have also been used to analyze the onset and trends of an invasion by
Pteronia incana into the dry Karoo region of South Africa [
19]. Multi-temporal aerial color infrared high-resolution images with a spatial resolution of 1 m were used to validate a distinct discrimination of
Pteronia incana from other surfaces in an invaded area in Eastern Cape, South Africa [
23]. Previous studies have proved that aerial photograph with a pixel size of 2 m are sufficient to study decametric-scale vegetation patch patterns [
24,
25]. With the launch of high spatial resolution civil commercial satellites in 1999, increasing numbers of studies have been carried out concerning the dynamics of vegetation patch patterns either by combining historical aerial photographs with multi-temporal high-resolution satellite images in recent years, or with the sole use of multi-temporal high-resolution satellite images. For example, a set of historical aerial photographs with a spatial resolution of 86 cm and a QuickBird satellite image with a spatial resolution of 60 cm were used to monitor shrub encroachment from 1937 to 2003 in southern New Mexico using the Object-Based Image Analysis method (OBIA), and approximately 87% of all shrubs of more than 2 m
2 were identified [
26]. Shekede et al. [
25] used a discrete wavelet transform to map dynamics in the encroachment of woody patches (with an average diameter of between 8 m and 32 m) onto Zimbabwean savanna through the integration of multi-temporal aerial photographs (Scale 1:20,000) with the resample high spatial resolution (a spatial resolution of 2 m) GeoEye satellite images. High spatial resolution SPOT 5 (for which sharpened imagery has a spatial resolution of 2.5 m), QuickBird and IKONOS (with a spatial resolution of 80 cm) satellite imagery has been successfully used to map tree canopy cover patterns in savannas, and tree canopy sizes mapped with SPOT 5 imagery using the OBIA method had a similar distribution to those observed with QuickBird detection [
27]. SPOT 5 (a spatial resolution of 2.5 m), ALOS (a spatial resolution of 2.5 m), ZY-3(a spatial resolution of 5.8 m), and QuickBird imagery have been also successfully used to detect the quasi-circular vegetation patches (QVPs, with an area of 115 m
2 to more than 1200 m
2) in the Yellow River Delta (YRD), China [
28,
29,
30]. The WorldView-2 satellite imagery (with a spatial resolution of 2 m) was recognized as more appropriate for the mapping to be used for a global estimation of giant reed invasion [
31].
The above-mentioned studies use single-date high-resolution imagery to map vegetation patches. Multi-date images are not generally used for the detection of such patches, but are mainly used to analyze the dynamics of vegetation patch patterns according to differences between the bi-temporal images. The phenological information for vegetation derived from multi-seasonal imagery is very useful for mapping tree species [
32,
33,
34,
35,
36,
37,
38,
39], forest cover [
40,
41,
42], crop types [
43,
44,
45,
46,
47,
48,
49], bush encroachment [
25], grassland [
50,
51,
52,
53,
54], and land use/land cover and changes [
55,
56,
57,
58,
59,
60,
61,
62]. Despite the different conclusions obtained from a few studies [
36,
63,
64], generally, multi-spectral and seasonal imagery can largely support higher classification accuracy than single-date imagery. During the temporal series classification procedure, it is necessary to find the optimal number of images and the optimal seasonal composition periods for mapping the target research objects in a region [
46,
58,
65], because the acquisition of a large number of images may not be feasible due to cloud contamination, the satellite revisiting cycle, the high price, and the fact that long image composition periods may be less informative and lead to information redundancy [
43,
48,
66].
Temporal series approaches involve the pixel-based and OBIA classification using several algorithms: principal component analysis, multi-temporal tasseled cap transformation, ISODATA, K-Means, maximum likelihood classification, linear discriminant analysis, multinomial logistic regression, discrete wavelet transform, deep neural network, spectral unmixing, spectral angle mapping, decision trees (DT), classification and regression trees, k-nearest neighbor (KNN), support vector machine (SVM), and random forest (RF). Accuracy assessments from previous studies suggest that there were inconsistent conclusions on the respective performance of these algorithms [
34,
56,
67]. Fassnacht et al. [
36] stated that the selection of the classifier itself was usually of low significance if the remotely sensed data met the demands of the classifier and study subject. Among these temporal series approaches, the RF classifier has been the most often used in recent years, and was demonstrated to produce higher classification accuracy with multi-seasonal images for a range of applications, including tree species detection [
38,
68,
69], identification of crop types [
48,
66,
70], and land cover classification [
56,
58,
59]. In addition to the spectral bands, the spectral indices, temporal anomalies of spectral indices, biophysical variables, texture information, and topographic data were often stacked and used as input to the RF classifier. After random forest variable importance measures and the repeated classification accuracy assessment procedure were implemented, the optimal composition for input variables was determined as the input to the RF classifier to produce the final high classification result. Although temporal series approaches have received increasing attention, the multi-spectral and seasonal imagery-based classification for vegetation patches is still lacking.
The QVPs are visible with various composition components and spatial structures within the unused land of the YRD and were initially found through high spatial resolution SPOT 5 fusion-ready imagery in 2011 [
71]. The QVPs appear to have a rapid succession rate and are ideal for studying the mechanism of spontaneous plant colonization and growth in this region, which will benefit the adaptive active restoration strategies implementation in the degraded wetland ecosystem of the YRD initiated in July 2002 [
72]. Mapping QVPs is therefore important for a better understanding of vegetation patch patterns, formation and evolution mechanisms, and patch functioning. The single-date high-resolution imagery from different satellites such as SPOT 5, ALOS, ZY-3, QuickBird, China-Brazil Earth Resource Satellite (CBERS) 04, Gaofen (GF) 1 and GF-2 has been used to map the QVPs [
16,
28,
29,
30,
71]. CBERS-04 imagery (with a spatial resolution of 5 m) is suitable for detecting the QVPs that are commonly found in an area of 25 km from the Bohai Sea of the YRD [
16]. However, the classification accuracies for K-Means, DT, and SVM, are not stable, and are low in some cases [
16,
73]. Although comparison of the different seasonal CBERS-04 images for mapping QVPs has been carried out [
73], the multi-spectral and seasonal imagery-based classification of QVPs remains unclear. For these reasons, the aim of this study was to explore the potential of multi-seasonal CBERS-04 images for mapping QVPs using the widely used RF classifier. CBERS-04 imagery acquired in the early spring, spring, summer, late autumn, and winter was used individually and the results were compared to provide insights into the optimal season for image acquisition. The different combinations of the different seasonal images were then used to evaluate the potential for using a multi-seasonal approach for mapping the QVPs.
4. Discussion
Previous research results for the YRD had demonstrated that different seasonal QVP classification from CBERS-04 imagery had variable accuracy, and that the spring imagery could detect the QVPs more precisely and completely when compared with the other seasonal images [
73], but the use of combined multi-season images for detecting QVPs has been lacking. In fact, the use of multi-seasonal images has been demonstrated as statistically important for the mapping of tree species [
35,
37,
38]. The importance of this study was in demonstrating that the seasonal influence in multi-season CBERS-04 images for classifying land cover and detecting QVPs was significant. This study showed that accurate land cover classification can be achieved for the distribution of QVPs in the YRD by applying both single season and multi-seasonal fusion CBERS-04 high spatial resolution (5 m) multispectral images (best result OA = 99.8%, Kappa = 0.997). Errors in the classification mainly existed between the QVPs and the bare soil. However, as in previous studies [
16,
73], the detection accuracy of the QVPs was low (best result precision rate = 66.3%, recall rate = 47.5%, F measure = 0.528). This low detection accuracy may be attributed to the omission of the smaller size QVPs (less than 3 × 3 pixels), or the coalescence between the QVPs with other QVPs or other vegetation.
Our comparison analysis demonstrates that both the March image and multi-seasonal fusion CBERS-04 high spatial resolution multispectral images including the March image, can produce high overall classification accuracies for land cover, and the multi-season combined images only increased 0.6–1.7% in overall accuracy as compared to the use of the March image alone. The research result of this study indicated that March and May were more suitable acquisition periods for single date imagery used for land cover mapping and QVP detection in this study area, which was consistent with that of Liu [
73]. The reason for the higher accuracies of the spring season classification over the summer season (the peak of growing season of vegetation with the greatest difference between vegetation and bare soil) are unpredictable, but some key observations during the field investigation can be used to explain this phenomenon. (1) Bare soil becomes brighter because of desiccation and soil salt accumulation in the spring, which increases the contrast between QVPs and bare soil, whereas the summer rainfall results in increases in soil moisture, therefore decreasing the contrast between the QVPs and the bare soil. (2) The gap between the QVPs and other strips of vegetation can be blurred due to the coalescence between vegetation elements in either summer or autumn season [
73]. For single season imagery, the October (autumn season, the end of growing season of vegetation) produced the lowest overall classification accuracy for land cover, which through visual inspections and comparisons on five images (
Figure 13) could be attributed to the small difference between the vegetation and bare soil area and more coalescence between vegetation elements. The highest classification accuracies for land cover from two-season, three-season, and four-season combined datasets were obtained from the May–October (OA = 99.4%), March–July–December (OA = 99.8%), and the March–July–October–December (OA = 99.8%) combined images respectively. The lowest classification accuracies for land cover from two-season, three-season, and four-season combined datasets were obtained from the MayvDecember (OA = 96.8%), March–May–December (OA = 97.0%), and the March–May–October–December (OA = 97.8%) combined images, respectively. These results indicated that adding imagery into classification could help to improve the accuracies for mapping land cover, which is consistent with the previous researches [
45,
46,
55,
58], but the increase in accuracy was limited. The March–May–October–December combined data had the lowest classification accuracy of all four-season combined datasets, which indicated that the combined data consisting of images with less contrasts or similar phenological features had the low capability for mapping land cover. It also showed that the combination of different season images with the higher classification accuracy for land cover was not necessarily an optimal combination of multi-season images, whereas the combination of the different season images with the different landscape temporal features, especially the phenological features of vegetation may be an optimal combination of multi-season images, and could further improve the classification accuracy for mapping land cover and detecting the QVPs.
Through one-sample t test analysis on Kappa values in SPSS 19.0 software (SPSS, Chicago, IL., USA), it indicated that the land cover classification results were statistically significant different for among single season images (p = 0.041), among two-season combined data (p = 0.002), and among three-season combined data (p = 0.025), and those from four-season combined data were not statistically significant different (p = 0.243). The independent-samples T test detected statistically significant differences of Kappa values between the single season and two-season (p = 0.039), the single season and three-season (p = 0.025), and the single season and four-season (p = 0.018) combined data, and no significant differences of Kappa values between the other combined data.
In general, the optimal seasonal combination data which had a high accuracy for classifying land cover could produce a high accuracy for detecting the QVPs (shown in
Figure 3,
Figure 4,
Figure 10 and
Figure 11). However, for the two-season and three-season combination datasets, the optimal seasonal combination data which had a high accuracy for classifying land cover did not necessarily produce a high accuracy for detecting the QVPs (
Figure 6,
Figure 7,
Figure 8 and
Figure 9). The main possible reason may be due to the coalescence between the QVPs and other vegetation elements which made the thresholds of area and shape less effective for detecting the QVPs from land cover map. The March–December spring-winter season combined images had the best result for detecting the QVPs compared to the single season and other multi-season combined images. Except the high difference between the QVPs and bare soil in the two images, one possible reason may be that
Tamarix chinensis, one of the main plant species composed of the QVPs, is easier to be identified in late fall and early winter [
100]. This is not consistent with the higher classification results for tree species mapping by applying the dry-wet season combined images [
35,
37,
38], which may be due to the different geographical and phenological characteristics, and soil salinization. In general, increasing temporal imagery acquisition frequencies can help to improve the classification accuracies [
46,
55,
58]. However, there still is an optimization of image acquisition timing and frequency for different research objects with different resolution imagery in different regions [
58,
66]. Our assessment results indicated that the March–December spring-winter season combined images produces optimal multi-season combined data when the multi-season images are to be used for detection of QVPs, and that the combined images including those of more than two seasons could not effectively improve the classification accuracy, which is in line with the conclusion that adding more images could not increase the value for classifying tree species [
36]. This finding must be interpreted with caution because there were only five images used in this study.
Figure 14 shows the thirty-one pairs of comparison analyses of the optimal classification results for mapping land covers with and without nine spectral indices using the overall accuracy (OA) and Kappa coefficient (Kappa). The optimal classification results for mapping land covers including nine spectral indices had higher OA and Kappa values than those without nine spectral indices, except for the October and December images. However, the difference of 0–2.3% for OA and 0–0.035 for Kappa was small between the thirty-one pairs with and without those indices, and twenty-eight of the thirty-one pairs had less than 1% OA difference and less than 0.02 Kappa difference. The paired-sample
t test detected no statistically significant differences of Kappa values between the land cover classification results from the combined data with and without nine spectral indices (
p = 0.003). This result indicated that the nine spectral indices derived from the three original spectral bands contributed low value for land cover classification. It must be especially considered that when a classification is to be carried out over a large study area, larger data storage and longer processing times are required.
Although the optimal seasonal CBERS-04 images along with effective predictive variable datasets were used, the low detection accuracies presented in this study are similar to previous research results where the individual seasonal high spatial resolution data, including those from CBERS-04, have been used for detecting QVPs using the OBIA classification with K-Means, KNN and SVM classifiers [
16,
73]. This indicated that the choice of the classifier itself could not greatly improve the classification accuracy of the QVPs, which is in line with the opinion that the selection of the classifier itself was of low significance if the data is adequate in meeting the demands of the classifier [
36].
It is possible to improve QVP mapping through three approaches in the future. (1) Additional texture features are included in the RF classification for the QVPs. Texture features have been proved important in the mapping of invasive Fallopia japonica [
32], larch plantations [
33], urban tree species [
34] and plastic-mulched farmland [
101]. (2) The sub-meter level resolution data are applied. When the gaps between QVPs or between QVPs and other strips of vegetation are less than 5 m, or the diameter of a QVP is less than 10 m, the 5 m spatial resolution of CBERS-04 imagery is not enough to detect the QVPs. Therefore, it is necessary to further improve spatial resolution [
16,
38]. (3) Higher spectral resolution data are applied. The WorldView-2 imagery has higher spectral resolution and unique spectral bands such the red edge band, shortwave bands, and has therefore demonstrated higher accuracy for the classification of tree species than other images with a similar or higher spatial resolution [
35,
38]. This is therefore a good choice for detecting QVPs in the YRD in the future.
5. Conclusions
This study has investigated the potential of multi-season CBERS-04 imagery for mapping the QVPs commonly found in the YRD, which extends from the Liaohe Delta to the coastal salt marshes in Northern Jiangsu Province, China. Classification was performed using the RF classification approach. Thirty-one different datasets including three spectral bands and nine spectral indices derived from the five fusion 5 m CBERS-04 multispectral images were compared for their capabilities of classifying land covers and detecting QVPs to evaluate the seasonal influences on classification accuracy. The main conclusions resulting from this research are as follows:
The early spring season image (March) produced a higher classification accuracy compared to all other individual season CBERS-04 images.
All of the optimal classifications resulted from the different combinations that include the early spring season image, which indicated that the early spring season image contributed much to classification success.
A typical early spring-winter (December and March) combined CBERS-04 images performed better for mapping the QVPs than the other multi-season combined image datasets.
The five-season combination images (March, May, July, October, and December) had the lowest classification accuracy for mapping QVPs.
Although the optimal classification results including nine spectral indices had higher OA and Kappa values than those without those indices, the improvement in overall accuracy was small. Therefore, the gain in accuracy should be balanced against the increase in processing time and storage space when using the derived spectral indices.
The choice of the classifier itself could not greatly improve classification accuracy from the CBERS-04 imagery. Improved classification accuracy will most likely be achieved through use of the higher spatial and spectral resolution data such as GF-2, WorldView-2, and WordView-3. The improvement in spectral resolution is more important for mapping QVPs than the improvement in spatial resolution.
Our work shows that it is important to choose suitable seasonal imagery for mapping of QVPs. The research results from this study also indicated that there is an optimization of image acquisition timing and frequency, and that adding more seasonal data for mapping the QVPs may not be worth the gain in classification accuracy, and may even reduce the classification accuracy. Future research should focus on (1) comparison analysis based on more seasonal data and more areas, (2) applying higher spatial and spectral resolution imagery to map the QVPs, and (3) map the components and structure of the QVPs, which is important for studying the evolution models of the QVPs.