Light Attenuation Prior based Underwater Image Enhancement

Katuri Sravani, Dr. S.V. Padmavathi Devi
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Abstract

Images captured underwater usually suffer from color distortion, detail blurring, low contrast, and a bluish or greenish tone due to light scattering and absorption in the underwater medium, which in turn affects the visibility adversely. Underwater image processing schemes are broadly categorized into two groups, restoration methods and enhancement methods. The approach of restoration methods is to assume the effects of underwater environment as degradation but in enhancement, this environment is assumed to be natural and tries to enhance the visual information to next extent. Restoration schemes are proved to give better performance than enhancement schemes. These restoration schemes are further classified as optical imaging methods, polarization methods and prior knowledge methods. The key problems faced by these schemes are excessive optimization parameters, difficulty of recognizing artificial lighting, adapting to multi-scatter scenario, red artifacts and over exposure. A large number of schemes are proposed in the literature under these categories and most of them suffer from one or more of the above-mentioned issues. In this paper, a rapid and effective scene depth estimation model will be proposed based on underwater light attenuation prior for underwater images and train the model coefficients with learning-based supervised linear regression. With the correct depth map, the background light and transmission maps for R-G-B light are easily estimated to recover the true scene radiance under the water.
基于光衰减先验的水下图像增强
水下拍摄的图像通常会出现颜色失真、细节模糊、对比度低、以及由于水下介质中的光散射和吸收而出现偏蓝或偏绿的色调,这反过来又会对能见度产生不利影响。水下图像处理方案大致分为两大类:恢复方法和增强方法。恢复方法的方法是将水下环境的影响假设为退化,而在增强中,假设该环境是自然的,并试图进一步增强视觉信息。恢复方案比增强方案具有更好的性能。这些恢复方案又分为光学成像法、偏振法和先验知识法。这些方案面临的关键问题是优化参数过多、人工照明识别困难、适应多散射场景、红色伪影和过度曝光。在这些类别下,文献中提出了大量的方案,其中大多数都存在上述一个或多个问题。本文提出了一种基于水下光衰减先验的快速有效的水下图像场景深度估计模型,并用基于学习的监督线性回归训练模型系数。有了正确的深度图,就可以很容易地估计出背景光和R-G-B光的透射图,从而恢复水下真实的场景亮度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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