一种光照自适应水下图像增强方法

Ruohan Zheng, Jianming Miao, Haosu Zhang, Xinyu Liu, Dongxu Tan
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引用次数: 0

摘要

在水下图像中,普遍存在光照不均匀、模糊和对比度低等问题,严重影响了拍摄图像的质量。近年来,许多研究人员都对水下图像处理进行了深入研究。由于水下环境错综复杂,低照度图像与高照度图像相比有着不同的要求。然而,现有的算法往往难以解决水下环境中各种照明条件造成的非均匀照明问题。它们也缺乏自适应增强不同亮度水下图像的能力。为了应对这些挑战,我们提出了一种用于水下图像的自适应光照增强方法。该算法能够根据水下图像的原始亮度,自适应地增强细节模糊的水下图像。此外,它还能利用图像的光照分量动态调整伽玛函数的参数,以增强色彩对比度。实验结果表明,我们的方法优于其他算法,UIQM 指标的优异得分就是证明。它能有效解决在不同光照条件下拍摄的水下图像中普遍存在的边缘模糊和光照不均匀问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An illumination adaptive underwater image enhancement method
In underwater imagery, issues such as non-uniform illumination, blurriness, and low contrast are prevalent, significantly impacting the quality of captured images. In recent years, numerous researchers have delved into underwater image processing. Due to the intricacies of underwater environments, low-light images have different requirements compared to well-illuminated ones. However, existing algorithms often struggle to address the non-uniform illumination issues stemming from various lighting conditions in underwater settings. They also lack the capability to adaptively enhance underwater images with varying brightness. To tackle these challenges, we propose an adaptive illumination enhancement method for underwater images. This algorithm offers the capability to adaptively enhance underwater images suffering from detail blurriness based on their original brightness. Furthermore, it dynamically adjusts the parameters of the gamma function using the image's illumination component to augment color contrast. Experimental results demonstrate that our approach outperforms other algorithms, as evidenced by superior scores in UIQM metric. It effectively addresses edge blurriness and non-uniform illumination issues prevalent in underwater images captured under varying lighting conditions.
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