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Vol.49, No.3, PP.131-198
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Editorial Scope and Editorial Board:  PDF( 0.28MB )

1
Risk Assessment and Adaptation Strategies for Dazhong Village Landslide No.1 in Yilan County, Taiwan
49(3):131-141
Cheng-Yang Hsiao[1*] Bor-Shiun Lin[1] Cheng-Nung Lai[1] Chia-Wei Wu[2] Chao-Chin Pai[2] Chun-Yi Wu[3] Zheng-Yi Feng[3]
* Corresponding Author. E-mail : darryl@sinotech.org.tw
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2
Determination of Landslide Susceptibilities Using UAV-Borne RGB and NIR images: A Case Study of Shenmu Area in Taiwan
49(3):142-153
Yu-Shen Hsiao[1]* Ta-Hsien Chung[1][2] Su-Chin Chen[1] Jung-Chieh Chang[1] [3]
* Corresponding Author. E-mail : yshsiao@nchu.edu.tw
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Determination of Landslide Susceptibilities Using UAV-Borne RGB and NIR images: A Case Study of Shenmu Area in Taiwan
Close
Yu-Shen Hsiao[1]* Ta-Hsien Chung[1][2] Su-Chin Chen[1] Jung-Chieh Chang[1] [3]

Abstract
This study conducted a landslide susceptibility analysis at Shenmu area in Taiwan by using terrain models constructed using unmanned aerial vehicles (UAVs). High-resolution orthomosaics and digital surface models(DSMs) were both obtained from several UAV practical surveys by using red–green–blue (RGB) and near-infrared(NIR) cameras,
respectively. GPS control points were used for evaluating the DSMs. The algorithm for landslide susceptibility
prediction is based on logistic regression, in which elevation, terrain slope, terrain aspect, terrain relief,
terrain roughness, and curvature, were the primary factors. The results are as follows: (1) the vertical accuracies of
RGB- and NIR-derived DSMs are 0.953 and 2.236 m, respectively; (2) terrain slopes and aspects are the most influential factors in landslide susceptibility prediction; (3) the DSM derived from RGB images are more appropriate for landslide susceptibility prediction than that from NIR.
Keyword: UAV, Landslide Susceptibility, Logistic Regression
〔1〕Department of Soil and Water Conservation, National Chung Hsing University, Taichung 402, Taiwan, R.O.C.
〔2〕Water Resources Bureau, Kaohsiung City Government, Kaohsiung 830, Taiwan, R.O.C.
〔3〕Third River Management Office, Water Resources Agency, Ministry of Economic Affairs, Taichung 413, Taiwan, R.O.C.
* Corresponding Author. E-mail : yshsiao@nchu.edu.tw
Received: 2017/08/28
Revised: 2018/03/19
Accepted: 2018/04/25
3
Analysis of the Landslide Characteristic and Building the Landslide Risk Model for Renai Township, Nantou
49(3):154-166
Chun-Hung Wu[1] Jun-Tai Hunag[1] Tingyeh Wu[2]*
* Corresponding Author. E-mail : tingyehwu1060@ncdr.nat.gov.tw
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4
Effects of Anisotropic Soil Hydraulic Conductivity on Slope Stability Using a Coupled Hydromechanical Framework
49(3):167-177
Yi-Jin Tsai Hsin-Fu Yeh*
* Corresponding Author. E-mail : hfyeh@mail.ncku.edu.tw
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5
Assessing River Morphology and Torrent Division Point of Main Basins in Taiwan
49(3):178-186
Fang-Yi Chu1 Chun-Yi Wu1 Shiuan-Pei An1 Shih-Hsih Lin2 Su-Chin Chen1*
* Corresponding Author. E-mail : scchen@nchu.edu.tw
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6
A Study of Landslide Image Classification through Data Clustering using Bacterial Foraging Optimization
49(3):187-198
Shiuan Wan1* Shih-Hsun Chang1 Tein-Yin Chou2 Chen Ming Shien2
* Corresponding Author. E-mail : shiuan123@teamail.ltu.edu.tw
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