Methods for tree cover extraction from high resolution orthophotos and airborne LiDAR scanning in Spanish dehesas

IF 0.4 Q4 REMOTE SENSING
I. Borlaf-Mena, Mihai A. Tanase, A. Gómez-Sal
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引用次数: 6

Abstract

Dehesas are high value agroecosystems that benefit from the effect tree cover has on pastures. Such effect occurs when tree cover is incomplete and homogeneous. Tree cover may be characterized from field data or through visual interpretation of remote sensing data, both time-consuming tasks. An alternative is the extraction of tree cover from aerial imagery using automated methods, on spectral derivate products (i.e. NDVI) or LiDAR point clouds. This study focuses on assessing and comparing methods for tree cover estimation from high resolution orthophotos and airborne laser scanning (ALS). RGB image processing based on thresholding of the ‘Excess Green minus Excess Red’ index with the Otsu method produced acceptable results (80%), lower than that obtained by thresholding the digital canopy model obtained from the ALS data (87%) or when combining RGB and LiDAR data (87.5%). The RGB information was found to be useful for tree delineation, although very vulnerable to confusion with the grass or shrubs. The ALS based extraction suffered for less confusion as it differentiated between trees and the remaining vegetation using the height. These results show that analysis of historical orthophotographs may be successfully used to evaluate the effects of management changes while LiDAR data may provide a substantial increase in the accuracy for the latter period. Combining RGB and Lidar data did not result in significant improvements over using LIDAR data alone.
西班牙地区高分辨率正射影像和机载激光雷达扫描的树木覆盖提取方法
Dehesas是高价值的农业生态系统,受益于树木覆盖对牧场的影响。当树木覆盖不完整且均匀时,就会产生这种影响。树木覆盖可以通过实地数据或遥感数据的视觉解释来表征,这两项任务都很耗时。另一种选择是使用光谱衍生产品(即NDVI)或激光雷达点云上的自动方法从航空图像中提取树木覆盖物。本研究的重点是评估和比较高分辨率正射影像和机载激光扫描(ALS)估算树木覆盖率的方法。基于Otsu方法的“过量绿色减去过量红色”指数阈值的RGB图像处理产生了可接受的结果(80%),低于从ALS数据中获得的数字冠层模型阈值(87%)或将RGB和激光雷达数据相结合时获得的结果(87.5%),尽管很容易与草或灌木混淆。基于ALS的提取较少混淆,因为它使用高度区分树木和剩余植被。这些结果表明,对历史正射影像的分析可以成功地用于评估管理变化的影响,而激光雷达数据可以在后期大幅提高准确性。与单独使用激光雷达数据相比,将RGB和激光雷达数据相结合并没有带来显著的改进。
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来源期刊
Revista de Teledeteccion
Revista de Teledeteccion REMOTE SENSING-
CiteScore
1.80
自引率
14.30%
发文量
11
审稿时长
10 weeks
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