Multi-feature combined cloud and cloud shadow detection in GaoFen-1 wide field of view imagery
Zhiwei Li, Huanfeng Shen, Huifang Li, Guisong Xia, Paolo Gamba,, Liangpei Zhang

TL;DR
This paper presents a multi-feature combined method for accurate cloud and cloud shadow detection in GaoFen-1 wide field of view imagery, improving accuracy with limited spectral bands and enabling better land-cover monitoring.
Contribution
The paper introduces an automatic multi-feature combined approach that enhances cloud and shadow detection accuracy in GF-1 imagery with minimal spectral data.
Findings
Achieved an average overall accuracy of 96.8% in cloud detection.
Significantly improved cloud fraction estimation compared to official methods.
Method is effective across diverse global scenes.
Abstract
The wide field of view (WFV) imaging system onboard the Chinese GaoFen-1 (GF-1) optical satellite has a 16-m resolution and four-day revisit cycle for large-scale Earth observation. The advantages of the high temporal-spatial resolution and the wide field of view make the GF-1 WFV imagery very popular. However, cloud cover is an inevitable problem in GF-1 WFV imagery, which influences its precise application. Accurate cloud and cloud shadow detection in GF-1 WFV imagery is quite difficult due to the fact that there are only three visible bands and one near-infrared band. In this paper, an automatic multi-feature combined (MFC) method is proposed for cloud and cloud shadow detection in GF-1 WFV imagery. The MFC algorithm first implements threshold segmentation based on the spectral features and mask refinement based on guided filtering to generate a preliminary cloud mask. The geometric…
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