UniV2D: Bridging Visual Restoration and Semantic Perception for Underwater Salient Object Detection
Laibin Chang, Shaodong Wang, Yunke Wang, Xu Zhang, Kui Jiang, Chang Xu, and Bo Du

TL;DR
UniV2D is a unified network that jointly optimizes underwater image restoration and salient object detection, leveraging semantic guidance to improve performance in challenging underwater environments.
Contribution
It introduces a mutually beneficial framework that integrates visual restoration and saliency detection, overcoming limitations of sequential pipelines and physical priors.
Findings
Outperforms state-of-the-art methods on multiple benchmarks.
Achieves significant improvements in both detection accuracy and visual restoration quality.
Demonstrates the effectiveness of semantic-driven joint optimization.
Abstract
Underwater salient object detection (USOD) plays a vital role in marine vision tasks but remains fundamentally challenging due to severe visual degradation, such as selective absorption and medium scattering. Conventional pipelines typically adopt a sequential "enhance-then-detect" paradigm. However, isolating low-level visual restoration from high-level semantic perception often leads to semantic inconsistency, where the restored images may not be optimal for detection and can even introduce task-irrelevant noise. To break this sequential bottleneck, we propose UniV2D, a Unified Vision-to-Detection Network that jointly optimizes visual restoration and salient object detection within a mutually beneficial framework. Unlike traditional methods that rely on disjointed pipelines or rigid physical priors, UniV2D introduces a semantic-driven learning paradigm: high-level saliency semantics…
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