DocumentCode :
31487
Title :
Semiautomatic Object-Oriented Landslide Recognition Scheme From Multisensor Optical Imagery and DEM
Author :
Jiann-Yeou Rau ; Jyun-Ping Jhan ; Ruey-Juin Rau
Author_Institution :
Dept. of Geomatics, Nat. Cheng Kung Univ., Tainan, Taiwan
Volume :
52
Issue :
2
fYear :
2014
fDate :
Feb. 2014
Firstpage :
1336
Lastpage :
1349
Abstract :
Rainfall-induced landslides are a major threat in Taiwan, particularly during the typhoon season. A precise survey of landslides after a super event is a critical task for disaster, watershed, and forestry land management. In this paper, we utilize high spatial resolution multispectral optical imagery and a digital elevation model (DEM) with an object-oriented analysis technique to develop a scheme for the recognition of landslides using multilevel segmentation and a hierarchical semantic network. Four case studies are presented to evaluate the feasibility of the proposed scheme. Three kinds of remote sensing imagery, namely pan-sharpened FORMOSAT-2 satellite images, aerial digital images from Z/I digital mapping camera, and images acquired by a digital single lens reflex camera mounted on a fixed-wing unmanned aerial vehicle are used. An accuracy assessment is accomplished by evaluating three test sites containing hundreds of landslides associated with the Typhoon Morakot. The input data include ortho-rectified image and DEM. Four spectral and one topographic object features are derived for semiautomatic landslide recognition. The threshold values are determined semiautomatically by statistical estimation from a few training samples. The experimental results show that the proposed approach can counteract the commission/omission errors and achieve missing/branching factors at less than 0.12 with a quality percentage of 81.7%. The results demonstrate the feasibility and accuracy of the proposed landslide recognition scheme even when different optical sensors are utilized.
Keywords :
autonomous aerial vehicles; cameras; digital elevation models; disasters; geomorphology; geophysical image processing; hierarchical systems; image recognition; image segmentation; object-oriented methods; optical images; optical sensors; sensor fusion; statistical analysis; storms; terrain mapping; topography (Earth); DEM; Taiwan; Typhoon Morakot; Z/I digital mapping camera; accuracy assessment; aerial digital images; branching factors; commission errors; digital elevation model; digital single lens reflex camera; disaster management; fixed-wing unmanned aerial vehicle; forestry land management; hierarchical semantic network; high spatial resolution multispectral optical imagery; missing factors; multilevel segmentation; multisensor optical imagery; object-oriented analysis technique; optical sensors; ortho-rectified image; pan-sharpened FORMOSAT-2 satellite images; quality percentage; rainfall-induced landslides; remote sensing imagery; semiautomatic landslide recognition; semiautomatic object-oriented landslide recognition scheme; spectral object features; statistical estimation; test sites; threshold values; topographic object feature; training samples; typhoon season; watershed management; Digital evaluation model (DEM); landslide recognition; object-oriented analysis (OOA); ortho-image;
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2013.2250293
Filename :
6506977
Link To Document :
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