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图学学报 ›› 2021, Vol. 42 ›› Issue (1): 59-64.DOI: 10.11996/JG.j.2095-302X.2021010059

• 图像处理与计算机视觉 • 上一篇    下一篇

一种基于色彩补偿的水下图像综合增强算法

  

  1. 1. 江苏海洋大学电子工程学院,江苏 连云港 222005; 2. 青岛海洋科学与技术试点国家实验室,山东 青岛 266237
  • 出版日期:2021-02-28 发布日期:2021-02-01
  • 基金资助:
    江苏省基础研究计划(自然科学基金) (BK20191469);江苏科技大学海洋装备研究院高技术协同创新项目(HZ20190005);江苏省研究生 科研创新项目(KYCX19_2314,KYCX20_2768,KYCX20_2769);国家自然科学基金青年项目(61601194) 

An underwater image comprehensive enhancement algorithm based on color compensation 

  1. 1. School of Electronic Engineering, Jiangsu Ocean University, Lianyungang Jiangsu 222005, China;  2. Pilot Qingdao National Laboratory for Marine Science and Technology, Qingdao Shandong 266237, China
  • Online:2021-02-28 Published:2021-02-01
  • Supported by:
    Jiangsu Basic Research Program (Natural Science Fund) (BK20191469); High-Tech Collaborative Innovation Project of Marine Equipment Research Institute of Jiangsu University of Science and Technology (HZ20190005); Jiangsu Province Graduate Research and Innovation Project (KYCX19_2314, KYCX20_2768, KYCX20_2769); National Natural Science Foundation Youth Project (61601194) 

摘要: 针对退化的水下图像在高级视觉分析任务中无法进行有效的目标检测及识别的问题,提出了一 种通过色彩补偿和对比度拉伸,HSV 空间 γ 校正和亮度通道去模糊系列方法实现了对水下图像的色彩校正、色 彩对比度、饱和度和细节清晰度的综合提高。其中,提出了基于高斯滤波的亮度通道去散射方法,并对典型水 体水下图像综合增强参数进行了分析。实验对比了综合增强方法和其他增强方法对偏蓝、偏绿、偏黄、白色近 岸浅滩水下图像的处理结果并通过目标检测网络对 7 种算法增强后的水下图像数据集进行训练与测试,对比了 平均水下目标识别准确率和检测到的目标数量与实际目标数量的比值来评估各个增强算法对于水下目标识别 和检测任务中的作用。实验表明,与现有方法相比,该算法不仅可以有效地实现各类水下图像清晰度和色彩增 强,适用范围广,而且可以有效地提高水下图像目标识别任务的准确率和检测数量。

关键词: 水下图像增强, 高斯滤波, 亮度通道去散射, 目标检测, 水下图像质量评价

Abstract: A novel underwater image compositive enhancement method was proposed to improve the quality of underwater images, thereby synthetically boosting the performance of high-level visual analysis. A series of operations, including color compensation and correction, gamma correction in the HSV space, and final brightness de-blurring, were combined to realize color restoration, contrast and clarity improvements for underwater images. A method of brightness channel de-scattering based on Gauss filtering was proposed, and the comprehensive enhancement parameters of typical underwater images were analyzed. The experiments in this paper compared the processing results of the compositive enhancement method and other enhancement methods for the bluish, greenish, yellowish, and whitish nearshore shoal underwater images, and trained and tested the underwater image data sets enhanced by seven algorithms through the target detection network. Comparisons were also made between the average underwater target recognition accuracy rate and the ratio of the number of detected targets to the actual target number, so as to evaluate the effect of each enhancement algorithm on underwater target recognition and detection tasks. The experiment results demonstrate that the proposed method can achieve substantial image clarity improvement and color restoration, and is widely applicable, compared with the existing methods. At the same time, it can effectively improve the accuracy of underwater target recognition and the number of the detected objects. 

Key words: underwater image enhancement, Gauss filtering, brightness channel de-scattering, object detection, underwater image quality evaluation

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