Large-Scale Damage Detection Using Satellite Imagery

Llonel Gueguen, Ralfa. Y. Hamid

2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR)(2015)

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摘要
Satellite imagery is a valuable source of information for assessing damages in distressed areas undergoing a calamity, such as an earthquake or an armed conflict. However, the sheer amount of data required to be inspected for this assessment makes it impractical to do it manually. To address this problem, we present a semi-supervised learning framework for large-scale damage detection in satellite imagery. We present a comparative evaluation of our framework using over 88 million images collected from 4, 665 KM2 from 12 different locations around the world. To enable accurate and efficient damage detection, we introduce a novel use of hierarchical shape features in the bags-ofvisual words setting. We analyze how practical factors such as sun, sensor-resolution, satellite-angle, and registration differences impact the effectiveness our proposed representation, and compare it to five alternative features in multiple learning settings. Finally, we demonstrate through a user-study that our semi-supervised framework results in a ten-fold reduction in human annotation time at a minimal loss in detection accuracy compared to manual inspection.
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关键词
large-scale damage detection,satellite imagery,damage assessment,calamity,semisupervised learning framework,hierarchical shape features,bags-of-visual words setting,sensor-resolution,registration differences
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