Joint Perceptual Learning for Enhancement and Object Detection in Underwater Scenarios
Chenping Fu, Wanqi Yuan, Jiewen Xiao, Risheng Liu, and Xin Fan

TL;DR
This paper introduces DPNet, a dual perception network that jointly learns underwater image enhancement and object detection through bilevel optimization, leading to improved visual quality and detection accuracy.
Contribution
It proposes a novel bilevel optimization framework and a dual perception network for simultaneous underwater image enhancement and object detection, improving efficiency and performance.
Findings
Enhanced detection accuracy on underwater datasets
Produced visually improved underwater images
Achieved efficient joint learning with less computational cost
Abstract
Underwater degraded images greatly challenge existing algorithms to detect objects of interest. Recently, researchers attempt to adopt attention mechanisms or composite connections for improving the feature representation of detectors. However, this solution does \textit{not} eliminate the impact of degradation on image content such as color and texture, achieving minimal improvements. Another feasible solution for underwater object detection is to develop sophisticated deep architectures in order to enhance image quality or features. Nevertheless, the visually appealing output of these enhancement modules do \textit{not} necessarily generate high accuracy for deep detectors. More recently, some multi-task learning methods jointly learn underwater detection and image enhancement, accessing promising improvements. Typically, these methods invoke huge architecture and expensive…
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Taxonomy
TopicsImage Enhancement Techniques · Advanced Neural Network Applications · Advanced Image Fusion Techniques
