LUIEO: A Lightweight Model for Integrating Underwater Image Enhancement and Object Detection
- URL: http://arxiv.org/abs/2412.07009v1
- Date: Sun, 01 Dec 2024 14:01:30 GMT
- Title: LUIEO: A Lightweight Model for Integrating Underwater Image Enhancement and Object Detection
- Authors: Bin Li, Li Li, Zhenwei Zhang, Yuping Duan,
- Abstract summary: This paper proposes a multi-task learning method that simultaneously enhances underwater images and improves detection accuracy.
The integrated model allows for the dynamic adjustment of information communication and sharing between different tasks.
Numerical experiments demonstrate that the proposed model achieves satisfactory results in visual performance, object detection accuracy, and detection efficiency.
- Score: 10.572090127928698
- License:
- Abstract: Underwater optical images inevitably suffer from various degradation factors such as blurring, low contrast, and color distortion, which hinder the accuracy of object detection tasks. Due to the lack of paired underwater/clean images, most research methods adopt a strategy of first enhancing and then detecting, resulting in a lack of feature communication between the two learning tasks. On the other hand, due to the contradiction between the diverse degradation factors of underwater images and the limited number of samples, existing underwater enhancement methods are difficult to effectively enhance degraded images of unknown water bodies, thereby limiting the improvement of object detection accuracy. Therefore, most underwater target detection results are still displayed on degraded images, making it difficult to visually judge the correctness of the detection results. To address the above issues, this paper proposes a multi-task learning method that simultaneously enhances underwater images and improves detection accuracy. Compared with single-task learning, the integrated model allows for the dynamic adjustment of information communication and sharing between different tasks. Due to the fact that real underwater images can only provide annotated object labels, this paper introduces physical constraints to ensure that object detection tasks do not interfere with image enhancement tasks. Therefore, this article introduces a physical module to decompose underwater images into clean images, background light, and transmission images and uses a physical model to calculate underwater images for self-supervision. Numerical experiments demonstrate that the proposed model achieves satisfactory results in visual performance, object detection accuracy, and detection efficiency compared to state-of-the-art comparative methods.
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