The Prediction of Cross-Regional Landslide Susceptibility Based on Pixel Transfer Learning

Author:

Wang Xiao1,Wang Di2,Li Xinyue3,Zhang Mengmeng2,Cheng Sizhi4,Li Shaoda2,Dong Jianhui1,Xu Luting1ORCID,Sun Tiegang5,Li Weile2ORCID,Ran Peilian2ORCID,Liu Liang2,Wang Baojie6,Zhao Ling7,Huang Xinyi8

Affiliation:

1. School of Architecture and Civil Engineering, Chengdu University, Chengdu 610106, China

2. College of Earth Sciences, Chengdu University of Technology, Chengdu 610059, China

3. Mahindra United World College of India, Pune 412108, MH, India

4. Sichuan Earthquake Agency, Chengdu 610041, China

5. China Building Materials Southwest Survey and Design Co., Ltd., Chengdu 610052, China

6. Guangzhou Hi-Target Navigation Tech Co., Ltd., Guangzhou 511400, China

7. ANT Intelligence Service (Chengdu) Information Technology Co., Ltd., Chengdu 610040, China

8. Mianyang Polytechnic, Mianyang 621000, China

Abstract

Considering the great time and labor consumption involved in conventional hazard assessment methods in compiling landslide inventory, the construction of a transferable landslide susceptibility prediction model is crucial. This study employs UAV images as data sources to interpret the typical alpine valley area of Beichuan County. Eight environmental factors including a digital elevation model (DEM) are extracted to establish a pixel-wise dataset, along with interpreted landslide data. Two landslide susceptibility models were built, each with a deep neural network (DNN) and a support vector machine (SVM) as the learner, and the DNN model was determined to have the best pre-training performance (accuracy = 88.6%, precision = 91.3%, recall = 94.8%, specificity = 87.8%, F1-score = 93.0%, and area under curve = 0.943), with higher parameters in comparison to the SVM model (accuracy = 77.1%, precision = 80.9%, recall = 87.8%, specificity = 73.9%, F1-score = 84.2%, and area under curve = 0.878). The susceptibility model of Beichuan County is then transferred to Mao County (which has no available dataset) to realize cross-regional landslide susceptibility prediction. The results suggest that the model predictions accomplish susceptibility zoning principles and that the DNN model can more precisely distinguish between high and very-high susceptibility areas in relation to the SVM model.

Funder

National Natural Science Foundation of China

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

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