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Cloud Removal from Satellite Images Using a Deep Learning Model with the Cloud-Matting Method

Deying Ma, Renzhe Wu, Dongsheng Xiao, Baikai Sui

2023Remote Sensing40 citationsDOIOpen Access PDF

Abstract

Clouds seriously limit the application of optical remote sensing images. In this paper, we remove clouds from satellite images using a novel method that considers ground surface reflections and cloud top reflections as a linear mixture of image elements from the perspective of image superposition. We use a two-step convolutional neural network to extract the transparency information of clouds and then recover the ground surface information of thin cloud regions. Given the poor balance of the generated samples, this paper also improves the binary Tversky loss function and applies it on multi-classification tasks. The model was validated on the simulated dataset and ALCD dataset, respectively. The results show that this model outperformed other control group experiments in cloud detection and removal. The model better locates the clouds in images with cloud matting, which is built based on cloud detection. In addition, the model successfully recovers the surface information of the thin cloud region when thick and thin clouds coexist, and it does not damage the original image’s information.

Topics & Concepts

Cloud computingComputer scienceRemote sensingCloud fractionConvolutional neural networkSuperposition principleSatelliteArtificial intelligenceComputer visionGeologyCloud coverPhysicsQuantum mechanicsOperating systemAstronomyAdvanced Image Fusion TechniquesRemote Sensing in AgricultureImage Enhancement Techniques
Cloud Removal from Satellite Images Using a Deep Learning Model with the Cloud-Matting Method | Litcius