1. Introduction
High-value timber species play important ecological and economic roles in forest management [
1,
2]. Trees with high economic value are often large in size [
3] contributing to structural heterogeneity, dynamics, and functions of the forest ecosystem [
4,
5], and make up a large fraction of aboveground biomass [
6]. They play an important role in the rate and pattern of regeneration and forest succession [
7] and provide habitats for wildlife species [
8]. Because of their high commercial value, high-value timber species are subjected to excessive and illegal harvesting [
9,
10]. In many regions of the world, their numbers are declining [
11] and therefore, species of high-value timber trees have often been earmarked for special attention in conservation and forest management practices [
12]. Due to their economic and ecological importance in forest management, the single-tree management of high-value timber species was recommended in previous studies [
3,
11]. Single tree selection, measuring and periodic monitoring for the optimal management of these species are important elements under single-tree management.
For management and conservation purposes, the forest inventory needs to provide accurate information of high-value individuals such as tree height and diameter at breast height (DBH). The individual tree DBH can be measured accurately by traditional field measurements, but tree height is relatively difficult to measure accurately [
13]. Further, the results of tree height measurements are greatly influenced by many factors including biophysical and topographic factors, instrument errors, and human errors [
14,
15,
16,
17]. Although errors are likely to be presented in the field measurements of tree height than other parameters, such as DBH [
15,
18], field-measured tree heights have been widely understood to be the most reliable source of tree height information [
19].
With the advancement of remote sensing (RS) technology such as airborne laser scanning (ALS) and digital aerial photographs derived from unmanned aerial vehicle (UAV-DAP), the use of RS technology may overcome difficulty in accurate tree height measurement in the field. ALS is an active remote sensing technique that uses a light detection and ranging (LiDAR) sensor, which enables us to measure the three-dimensional (3D) distribution of vegetation canopy components as well as sub-canopy topography, resulting in an accurate estimation of vegetation height and ground elevation [
20,
21]. Many previous studies have demonstrated the ability of LiDAR data in the estimation of forest information over large areas of forests with high accuracy [
22,
23,
24]. Further, a LiDAR 3D forest structure can provide accurate individual tree height information [
25,
26,
27,
28,
29]. However, the major limitation of LiDAR data is the high acquisition cost, which limits its application in forest management directives [
30,
31].
Recently UAV-DAP has become a popular RS technique for fine-scale remote sensing due to its flexibility in data acquisition, low operational cost, and high spatial and temporal resolution [
32]. Software developments, such as Structure-from-Motion (SfM), offer the efficient processing of digital aerial photographs (DAPs) acquired from low-cost UAV platforms, providing an cost-effective alternative to generate the 3D forest information, i.e., photogrammetric point cloud (PPC) [
33,
34,
35]. Although PPC fails to provide ground information especially in dense vegetation cover, it can provide an upper canopy surface [
36,
37]. Thus, the accurate digital terrain model (DTM) is a prerequisite for the accurate characterization of forest information using PPC. Where highly accurate DTM exists, PPC has been proven to provide a cost-effective estimation of forest information with high accuracy comparable to LiDAR data [
38,
39,
40,
41,
42,
43,
44]. Moreover, recent studies suggested that UAV-DAP could provide highly accurate individual tree height information [
45,
46,
47,
48]. However, most of these studies have been employed in forests with simple structural complexity such as plantations or even-aged forests.
Applications of UAV-DAP for individual tree height measurement, particularly for large-size broadleaf trees, have not been widely studied, especially in structurally complex mixed forests. Moreover, a rigorous comparison of individual tree height estimation between LiDAR, UAV-DAP and field survey data is rare. Therefore, we tried to address these issues in this study.
In cool-temperate mixed forests in northern Japan, monarch birch is the most valuable timber species, with the log price reaching 20,000 USD per cubic meter, and castor aralia is the second most expensive timber species, with its prices reaching 7500 USD per cubic meter [
3]. Japanese oak, is another valuable broadleaved timber species; its timber supply is exclusively dependent on the cutting of large trees within mixed forests [
49]. Accurate individual tree information of these high-value timber species is important for the reliable application of single-tree management system [
2,
3]. However, tree height estimation for these species is a challenging task for forest managers.
The aim of the present study is, therefore, to examine whether UAV-DAP could be used to derive the height of large-size high-value trees. First, we compare individual tree height derived from field survey, LiDAR, and UAV-DAP data. Since tree height can be predicted from the individual tree DBH (e.g., [
50,
51,
52]), secondly, we assess the relationship between individual tree DBH and the tree height derived from field survey, LiDAR, and UAV-DAP through height-diameter models to examine how three height sources can be explained by tree diameter.
4. Discussion
In this study, we demonstrated the ability of UAV-DAP to perform the individual tree height estimation of high-value timber individuals in mixed conifer-broadleaf forests in northern Japan. We observed that UAV-DAP enabled individual tree height estimation with comparable accuracy to airborne laser scanning or LiDAR data and field-measured data.
According to
Table 4, stronger correlation coefficients were observed in LiDAR and UAV-DAP tree height comparison among three pairs of comparison. LiDAR derived tree height showed better correlation with field measure tree height than UAV-DAP derived tree height. This result is consistent with a previous study by Wallace et al. [
44]. They also reported a stronger correlation between Field vs. LiDAR than Field vs. UAV-DAP. However, the correlation between LiDAR and field measured tree height in this study was lower than other studies [
25,
27,
28,
29]. This lower correlation could be related to the species, the tree height itself and measurement errors in the field. In addition, the accuracy of tree heights derived from RS data might also be influenced by many factors such as structural complexity of the forest canopy which could affect photogrammetric reconstruction [
44,
61,
62]. Moreover, LiDAR data also have limitations such as tree height estimation errors due to different canopy height model generation methods [
63], susceptibility to influence of slope and crown shape on canopy height [
64].
One of the key questions when using field-measured tree height as reference data for the evaluation of LiDAR or UAV-DAP is the accuracy of field measurement. Sibona et al. [
29] assessed the accuracy of LiDAR tree height using actual tree height derived from 100 felled trees. They found that tree height derived from LiDAR data was closer to actual height than field measurement. Since our target species are large-size high-value broadleaved trees, some error in field measurement could be expected because of the tree height itself and tree crowns which limit the visibility to the tree tops. This was also highlighted by Hunter et al. [
15] and Stereńczak et al. [
17]. These studies reported that small measurement errors were found in conifer species and larger trees were subjected more to height measurement errors in the field. Further, the number of leaves present in our study species may impact the accuracy of field tree height measurement. Huang et al. [
48] also highlighted that the effect of number of leaves in the canopy may affect the tree height estimation for deciduous trees.
For all three high-value broadleaved species, the highest correlation and consistency was observed between UAV-DAP tree height and LiDAR tree height. Using the area-based approach, previous studies comparing the performance of UAV-DAP and LiDAR data also reported the high correlation and accuracy in forest attribute estimation such as mean height, and dominant height (e.g., [
38,
39,
41,
61]).
Among the three broadleaved species, castor aralia showed a higher correlation than the other two species in all three pairs of comparison. The crown of castor aralia is somewhat rounded and regular in shape, which makes it easier for the surveyor to detect the tree tops from the ground during the field measurement than other two species. The size and shape of monarch birch crown are highly irregular. Moreover, the maximum size of field measured trees of Japanese oak was 110 cm in DBH with an average DBH larger than other two species. The older and larger oak tree crowns may produce extensive crowns, causing difficulty in determining the position of the highest point of the oak trees. This could contribute to some errors in estimating tree height using height measuring instruments. Larjavaara and Muller-Landau [
16] also reported that, under typical forest conditions with limited visibility to the tree tops, tree height measurement instruments cannot produce manufacturer-reported accuracies.
Positive height differences were observed for higher trees and negative height differences were found for lower height trees between field and RS-derived tree height (
Figure 4), meaning field measured tree height overestimated the tree height of higher trees and underestimated the height of lower trees. This result is consistent with previous studies. For example, Hunter et al. [
15] in their study in the Brazilian Amazon reported that ground-based measurements of tree heights of emergent crowns exceeded LiDAR-measured tree heights by an average of 1.4 m. Moreover Laurin et al. [
13] and Wang et al. [
28] reported that traditional field measurement techniques may overestimate the tree height of tall trees. Imai et al. [
26] also concluded in their study in Japan that LiDAR data tend to estimate the tree height as lower than the actual height.
In terms of LiDAR and UAV-DAP tree height differences; there was a positive height difference in lower trees and negative height difference in higher trees. Tree height differences between LiDAR and UAV-DAP varied with species. The largest height difference was found for monarch birch (-2.74 m and 4.00 m). A previous study in a mixed conifer-broadleaf forest in northern Japan [
61] reported that the mean differences between LiDAR-CHM and UAV-DAP-CHM in terms of the maximum tree heights of the sample plots were 2.96 m and 1.05 m in two study compartments. However, higher mean height differences were found in UAV-DAP data [
61].
The applicability of tree height information derived from UAV-DAP was analysed using the height-diameter model for each species since tree diameter play significant role in predicting the tree height. UAV-DAP derived tree height can be explained by tree diameter with high accuracy compare to LiDAR and field measured tree height (
Table 7,
Figure 6,
Figure 7 and
Figure 8). Mean prediction errors of the tested height-diameter models also revealed the lowest errors for LiDAR and UAV-DAP derived tree height in all height class. In
Figure 7, highest negative mean prediction errors were found for castor aralia which may be due to the unequal high distribution of field measured tree of castor aralia trees with minimum height values of 14.1 m which could affect the model performance. For all species, higher prediction errors were observed for field measure tree height. This can also be confirmed by the larger RMSE values of field measured tree height. Although there is not sufficient evidence in the existing literature for these results, the tree height of large-size high-value trees derived from LiDAR and UAV-DAP can be explained better by the tree diameter than field-measured height. Therefore, this study confirmed the applicability of the UAV-DAP for tree height estimation of large-size high-value trees and its potential for estimating tree diameter. The use of UAV-DAP could facilitate the periodic monitoring and assessment of high-value timber species.