2023
DOI: 10.3390/app132413109
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Enhanced Atrous Extractor and Self-Dynamic Gate Network for Superpixel Segmentation

Bing Liu,
Zhaohao Zhong,
Tongye Hu
et al.

Abstract: A superpixel is a group of pixels with similar low-level and mid-level properties, which can be seen as a basic unit in the pre-processing of remote sensing images. Therefore, superpixel segmentation can reduce the computation cost largely. However, all the deep-learning-based methods still suffer from the under-segmentation and low compactness problem of remote sensing images. To fix the problem, we propose EAGNet, an enhanced atrous extractor and self-dynamic gate network. The enhanced atrous extractor is us… Show more

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