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arxiv: 1910.07129 · v1 · pith:5WHP2QFZ · submitted 2019-10-16 · cs.CV · eess.IV

Large-Scale Landslides Detection from Satellite Images with Incomplete Labels

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classification cs.CV eess.IV
keywords detectionlandslidesatellitedisastersimageslandslidesactualanalysis
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Earthquakes and tropical cyclones cause the suffering of millions of people around the world every year. The resulting landslides exacerbate the effects of these disasters. Landslide detection is, therefore, a critical task for the protection of human life and livelihood in mountainous areas. To tackle this problem, we propose a combination of satellite technology and Deep Neural Networks (DNNs). We evaluate the performance of multiple DNN-based methods for landslide detection on actual satellite images of landslide damage. Our analysis demonstrates the potential for a meaningful social impact in terms of disasters and rescue.

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