IA2U: A Transfer Plugin with Multi-Prior for In-Air Model to Underwater
Jingchun Zhou, Qilin Gai, Kin-man Lam, Xianping Fu

TL;DR
This paper introduces IA2U, a transfer plugin with multiple priors that adapts in-air models for underwater image enhancement and object detection, addressing environmental variability efficiently.
Contribution
The paper presents a novel transfer plugin, IA2U, which leverages multiple underwater priors and a Transformer-like structure to adapt in-air models for underwater tasks.
Findings
IA2U improves underwater image enhancement performance.
IA2U enhances underwater object detection accuracy.
The method achieves superior results compared to existing approaches.
Abstract
In underwater environments, variations in suspended particle concentration and turbidity cause severe image degradation, posing significant challenges to image enhancement (IE) and object detection (OD) tasks. Currently, in-air image enhancement and detection methods have made notable progress, but their application in underwater conditions is limited due to the complexity and variability of these environments. Fine-tuning in-air models saves high overhead and has more optional reference work than building an underwater model from scratch. To address these issues, we design a transfer plugin with multiple priors for converting in-air models to underwater applications, named IA2U. IA2U enables efficient application in underwater scenarios, thereby improving performance in Underwater IE and OD. IA2U integrates three types of underwater priors: the water type prior that characterizes the…
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Taxonomy
TopicsImage Enhancement Techniques · Underwater Vehicles and Communication Systems · Advanced Neural Network Applications
