Author:
Yan Qing,Liu Hu,Zhang Jingjing,Sun Xiaobing,Xiong Wei,Zou Mingmin,Xia Yi,Xun Lina
Abstract
Cloud detection is one of the critical tasks in remote sensing image preprocessing. Remote sensing images usually contain multi-dimensional information, which is not utilized entirely in existing deep learning methods. This paper proposes a novel cloud detection algorithm based on multi-scale input and dual-channel attention mechanisms. Firstly, we remodeled the original data to a multi-scale layout in terms of channels and bands. Then, we introduced the dual-channel attention mechanism into the existing semantic segmentation network, to focus on both band information and angle information based on the reconstructed multi-scale data. Finally, a multi-scale fusion strategy was introduced to combine band information and angle information simultaneously. Overall, in the experiments undertaken in this paper, the proposed method achieved a pixel accuracy of 92.66% and a category pixel accuracy of 92.51%. For cloud detection, the proposed method achieved a recall of 97.76% and an F1 of 95.06%. The intersection over union (IoU) of the proposed method was 89.63%. Both in terms of quantitative results and visual effects, the deep learning model we propose is superior to the existing semantic segmentation methods.
Funder
Key Laboratory of Optical Calibration and Characterization KLOCC, Chinese Academy of Sciences Open Research Foundation, and Anhui Provincial Natural Science Foundation
Subject
General Earth and Planetary Sciences
Cited by
8 articles.
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