Deep learning based cloud detection for medium and high resolution remote sensing images of different sensors
Zhiwei Li, Huanfeng Shen, Qing Cheng, Yuhao Liu, Shucheng You, Zongyi, He

TL;DR
This paper introduces MSCFF, a deep learning model that effectively detects clouds in diverse remote sensing images, outperforming traditional methods and enhancing preprocessing for satellite imagery analysis.
Contribution
The paper presents a novel multi-scale convolutional feature fusion network for cloud detection across various sensors and resolutions, improving accuracy over existing methods.
Findings
MSCFF outperforms traditional rule-based methods.
MSCFF surpasses state-of-the-art deep learning models.
Effective across diverse sensors and resolutions.
Abstract
Cloud detection is an important preprocessing step for the precise application of optical satellite imagery. In this paper, we propose a deep learning based cloud detection method named multi-scale convolutional feature fusion (MSCFF) for remote sensing images of different sensors. In the network architecture of MSCFF, the symmetric encoder-decoder module, which provides both local and global context by densifying feature maps with trainable convolutional filter banks, is utilized to extract multi-scale and high-level spatial features. The feature maps of multiple scales are then up-sampled and concatenated, and a novel multi-scale feature fusion module is designed to fuse the features of different scales for the output. The two output feature maps of the network are cloud and cloud shadow maps, which are in turn fed to binary classifiers outside the model to obtain the final cloud and…
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