2024
DOI: 10.3389/fmars.2024.1411717
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USNet: underwater image superpixel segmentation via multi-scale water-net

Chuhong Wang,
Wenli Duan,
Chengche Luan
et al.

Abstract: Underwater images commonly suffer from a variety of quality degradations, such as color casts, low contrast, blurring details, and limited visibility. Existing superpixel segmentation algorithms face challenges in achieving superior performance when directly applied to underwater images with quality degradation. In this paper, to alleviate the limitations of superpixel segmentation when applied to underwater scenes, we propose the first underwater superpixel segmentation network (USNet), specifically designed … Show more

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