基于模糊规则的图像曝光水平估计和暗图像对比度增强的自适应伽玛校正

A. Khunteta, D. Ghosh, Ribhu
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引用次数: 17

摘要

弱照度暗图像的图像增强一直是图像处理领域的一个重要课题和挑战。一种经常用于增加暗图像对比度的技术是伽马校正。然而,伽马值适合适当增强给定的图像仍然是一个问题。在本文中,我们建议首先使用基于一组模糊规则的模糊推理来估计输入图像中的曝光水平。在此之后,我们推导出伽马值作为暴露水平的函数。此外,我们建议在输入图像的负值上应用伽玛校正,因为它比传统的伽玛校正产生更好的对比度。将该方法应用于若干灰度和彩色光照较差的图像,并与直方图均衡化方法的结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy rule-based image exposure level estimation and adaptive gamma correction for contrast enhancement in dark images
Image enhancement of badly illuminated dark images is always a challenging as well as an important task in image processing. A technique which is often used to increase the contrast of dark images is gamma correction. However, the value of gamma suitable for appropriate enhancement of a given image remains a question. In this paper, we propose to first estimate the level of exposure in the input image using fuzzy reasoning that is based on a set of fuzzy rules. Following this, we derive the gamma value as a function of the exposure level. Also, we propose to apply the gamma correction on the negative of the input image since it produces a better contrast compared to the conventional gamma correction. The proposed method was applied to several badly illuminated images, both gray and color, and the results obtained were compared to that obtained using histogram equalization.
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