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MAC-Lookup: Multi-Axis Conditional Lookup Model for Underwater Image Enhancement

MAC-Lookup: Multi-Axis Conditional Lookup Model for Underwater Image Enhancement

来源:Arxiv_logoArxiv
英文摘要

Enhancing underwater images is crucial for exploration. These images face visibility and color issues due to light changes, water turbidity, and bubbles. Traditional prior-based methods and pixel-based methods often fail, while deep learning lacks sufficient high-quality datasets. We introduce the Multi-Axis Conditional Lookup (MAC-Lookup) model, which enhances visual quality by improving color accuracy, sharpness, and contrast. It includes Conditional 3D Lookup Table Color Correction (CLTCC) for preliminary color and quality correction and Multi-Axis Adaptive Enhancement (MAAE) for detail refinement. This model prevents over-enhancement and saturation while handling underwater challenges. Extensive experiments show that MAC-Lookup excels in enhancing underwater images by restoring details and colors better than existing methods. The code is https://github.com/onlycatdoraemon/MAC-Lookup.

Fanghai Yi、Zehong Zheng、Zexiao Liang、Yihang Dong、Xiyang Fang、Wangyu Wu、Xuhang Chen

计算技术、计算机技术电子技术应用

Fanghai Yi,Zehong Zheng,Zexiao Liang,Yihang Dong,Xiyang Fang,Wangyu Wu,Xuhang Chen.MAC-Lookup: Multi-Axis Conditional Lookup Model for Underwater Image Enhancement[EB/OL].(2025-07-03)[2025-07-17].https://arxiv.org/abs/2507.02270.点此复制

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