Domain Adaptation for Satellite-Borne Multispectral Cloud Detection

被引:2
作者
Du, Andrew [1 ]
Doan, Anh-Dzung [1 ]
Law, Yee Wei [2 ]
Chin, Tat-Jun [1 ]
机构
[1] Univ Adelaide, Australian Inst Machine Learning, Adelaide, SA 5000, Australia
[2] Univ South Australia, UniSA STEM, Mt Gambier, SA 5095, Australia
关键词
Earth observation; satellite; multispectral; cloud detection; convolutional neural network; domain adaptation; REMOTE-SENSING IMAGES; SHADOW DETECTION; DEEP; REMOVAL; CLASSIFICATION; LANDSAT-8; COVER;
D O I
10.3390/rs16183469
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The advent of satellite-borne machine learning hardware accelerators has enabled the onboard processing of payload data using machine learning techniques such as convolutional neural networks (CNNs). A notable example is using a CNN to detect the presence of clouds in the multispectral data captured on Earth observation (EO) missions, whereby only clear sky data are downlinked to conserve bandwidth. However, prior to deployment, new missions that employ new sensors will not have enough representative datasets to train a CNN model, while a model trained solely on data from previous missions will underperform when deployed to process the data on the new missions. This underperformance stems from the domain gap, i.e., differences in the underlying distributions of the data generated by the different sensors in previous and future missions. In this paper, we address the domain gap problem in the context of onboard multispectral cloud detection. Our main contributions lie in formulating new domain adaptation tasks that are motivated by a concrete EO mission, developing a novel algorithm for bandwidth-efficient supervised domain adaptation, and demonstrating test-time adaptation algorithms on space deployable neural network accelerators. Our contributions enable minimal data transmission to be invoked (e.g., only 1% of the weights in ResNet50) to achieve domain adaptation, thereby allowing more sophisticated CNN models to be deployed and updated on satellites without being hampered by domain gap and bandwidth limitations.
引用
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页数:36
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