基于改进LU2Net的浑浊水偏振图像增强
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1.青岛理工大学信息与控制工程学院 青岛 266520;2.山东大学控制科学与工程学院 济南 250061

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TP391;TN911.73

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山东省自然科学基金重大基础研究项目(ZR2022ZD38)、青岛市科技计划重点研发专项(22-3-3-hygg-30-hy)资助


Polarization image enhancement for turbid water based on improved LU2Net
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1.School of Information and Control Engineering,Qingdao University of Technology,Qingdao 266520,China; 2.School of Control Science and Engineering,Shandong University,Jinan 250061,China

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    摘要:

    由于水体散射的原因,水下图像普遍存在质量退化问题。针对该问题,本文提出了一种基于改进LU2Net的浑浊水偏振图像增强模型,并在自建数据集上验证。首先,将采集的彩色偏振图像灰度化处理,通过将0°、45°、90°这3个偏振分量融合来获取完整的线偏振信息,再采用改进的LU2Net网络模型对退化的水下偏振图像进行增强,最后获取具有更多细节特征的增强图像。实验结果证明,本文方法在主客观评价以及特征点检测和Canny边缘检测结果上都优于用于对比的FUnIE-GAN、MLLE等水下图像增强方法,尤其是在特征点检测过程中,本文使用了ORB,AKAZE等四种不同的特征点检测方法,本文方法都能提取到更多的特征点。本文方法的LPIPS相比现有对比的最优方法降低了3.35%,UCIQE相比改进前的算法增加了1.16%,NIQE相比改进前的算法降低了7.59%。本文提出的方法,在自然光状态下的浑浊水环境中,能够提取到更清晰的图像边缘和纹理等细节特征,提升了浑浊水环境中的成像质量。

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    Due to light scattering in water, underwater images commonly suffer from quality degradation. To address this issue, this paper proposes an enhancement model for turbid underwater polarized images based on an enhanced LU2Net network, validated using a self-constructed dataset. Initially, the acquired color polarization images are converted to grayscale. Complete linear polarization information is obtained by fusing the three polarization components at 0°, 45° and 90°. The degraded underwater polarized images are subsequently enhanced using the proposed enhanced LU2Net network model. Finally, enhanced images possessing richer detail features are acquired. Experimental results demonstrate that the proposed method outperforms comparative underwater image enhancement techniques including FUnIE-GAN and MLLE, in terms of both subjective and objective evaluations, as well as in the outcomes of feature point detection and Canny edge detection. Crucially, during feature point detection employing four distinct methods including ORB and AKAZE, the proposed approach consistently extracted a greater number of feature points.The proposed method achieves a 3.35% reduction in LPIPS compared to the best-performing existing method used for comparison. Furthermore, it increases the UCIQE score by 1.16% and decreases the NIQE score by 7.59% compared to the algorithm prior to enhancement. The proposed method successfully extracts clearer image edges, textures, and other fine details in turbid water environments under natural lighting conditions, thereby enhancing imaging quality in such challenging scenarios.

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张振楷,张浩,信恒府,元辉,田艳兵.基于改进LU2Net的浑浊水偏振图像增强[J].电子测量技术,2026,49(4):236-246

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  • 在线发布日期: 2026-04-16
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