Publication | Open Access
CubeSat cloud detection based on JPEG2000 compression and deep learning
21
Citations
11
References
2018
Year
Convolutional Neural NetworkEngineeringJpeg Compression StrategyImage ClassificationImage AnalysisJpeg2000 CompressionData SciencePattern RecognitionCubesatsEmbedded Machine LearningSatellite ImagingMachine VisionObject DetectionComputer EngineeringCareful Compression StrategyComputer ScienceDeep LearningOptical Image RecognitionComputer VisionRemote Sensing
In order to enhance the efficiency of the image transmission system and the robustness of the optical imaging system of the Association of Sino-Russian Technical Universities satellite, a new framework of on-board cloud detection by utilizing a lightweight U-Net and JPEG compression strategy is described. In this method, a careful compression strategy is introduced and evaluated to acquire a balanced result between the efficiency and power consuming. A deep-learning network combined with lightweight U-Net and Mobilenet is trained and verified with a public Landsat-8 data set Spatial Procedures for Automated Removal of Cloud and Shadow. Experiment results indicate that by utilizing image-compression strategy and depthwise separable convolutions, the maximum memory cost and inference speed are dramatically reduced into 0.7133 Mb and 0.0378 s per million pixels while the overall accuracy achieves around 93.1%. A good possibility of the on-board cloud detection based on deep learning is explored by the proposed method.
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