CLOUD DETECTION by FUSING MULTI-SCALE CONVOLUTIONAL FEATURES

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Abstract

Clouds detection is an important pre-processing step for accurate application of optical satellite imagery. Recent studies indicate that deep learning achieves best performance in image segmentation tasks. Aiming at boosting the accuracy of cloud detection for multispectral imagery, especially for those that contain only visible and near infrared bands, in this paper, we proposed a deep learning based cloud detection method termed MSCN (multi-scale cloud net), which segments cloud by fusing multi-scale convolutional features. MSCN was trained on a global cloud cover validation collection, and was tested in more than ten types of optical images with different resolution. Experiment results show that MSCN has obvious advantages over the traditional multi-feature combined cloud detection method in accuracy, especially when in snow and other areas covered by bright non-cloud objects. Besides, MSCN produced more detailed cloud masks than the compared deep cloud detection convolution network. The effectiveness of MSCN make it promising for practical application in multiple kinds of optical imagery.

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APA

Li, Z., Shen, H., Wei, Y., Cheng, Q., & Yuan, Q. (2018). CLOUD DETECTION by FUSING MULTI-SCALE CONVOLUTIONAL FEATURES. In ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences (Vol. 4, pp. 149–152). Copernicus GmbH. https://doi.org/10.5194/isprs-annals-IV-3-149-2018

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