LiDAR and Orthophoto Synergy to optimize Object-Based Landscape Change: Analysis of an Active Landslide

被引:16
作者
Kamps, Martijn T. [1 ]
Bouten, Willem [1 ]
Seijmonsbergen, Arie C. [1 ]
机构
[1] Univ Amsterdam, Inst Biodivers & Ecosyst Dynam, NL-1090 GE Amsterdam, Netherlands
关键词
data synergy; OBIA; Landslide; above ground biomass; LiDAR; orthophotos; land cover change; Vorarlberg; LAND-COVER CLASSIFICATION; IMAGE SEGMENTATION; AIRBORNE LIDAR; MULTISPECTRAL IMAGERY; FORESTED LANDSLIDES; ESTIMATING BIOMASS; ACCURACY; AREA; SATELLITE; IDENTIFICATION;
D O I
10.3390/rs9080805
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Active landslides have three major effects on landscapes: (1) land cover change, (2) topographical change, and (3) above ground biomass change. Data derived from multi-temporal Light Detection and Ranging technology (LiDAR) are used in combination with multi-temporal orthophotos to quantify these changes between 2006 and 2012, caused by an active deep-seated landslide near the village of Doren in Austria. Land-cover is classified by applying membership-based classification and contextual improvements based on the synergy of orthophotos and LiDAR-based elevation data. Topographical change is calculated by differencing of LiDAR derived digital terrain models. The above ground biomass is quantified by applying a local-maximum algorithm for tree top detection, in combination with allometric equations. The land cover classification accuracies were improved from 65% (using only LiDAR) and 76% (using only orthophotos) to 90% (using data synergy) for 2006. A similar increase from respectively 64% and 75% to 91% was established for 2012. The increased accuracies demonstrate the effectiveness of using data synergy of LiDAR and orthophotos using object-based image analysis to quantify landscape changes, caused by an active landslide. The method has great potential to be transferred to larger areas for use in landscape change analyses.
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页数:13
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