作者: Yixiang Huang , Ming Wu , Xin Jiang , Jiaao Li , Mengqiu Xu
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摘要: Sea fog detection is a challenging and significant task in the field of remote sensing. Deep learning-based methods have shown promising potential, but require a large amount of pixel-level labeled data that are time-consuming and labor-intensive to acquire. To scale up the dataset and overcome the limitations of pixel-level annotation, we attempt to explore the existing knowledge from historical statistics for label-efficient sea fog detection. In this article, we propose an image-level weakly supervised sea fog detection dataset (WS-SFDD) and a novel weakly supervised sea fog detection framework via prototype learning, named ProCAM. According to the sea fog events recorded by the Marine Weather Review published quarterly by the National Meteorological Center of China, we collect the sea fog images from Himawari-8 satellite data and obtain free image-level labels to construct the dataset. However, with image …