Color constancy using KL-divergence

Charles R. Rosenberg, M. Hebert, S. Thrun
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引用次数: 60

Abstract

Color is a useful feature for machine vision tasks. However its effectiveness is often limited by the fact that the measured pixel values in a scene are influenced by both object surface reflectance properties and incident illumination. Color constancy algorithms attempt to compute color features which are invariant of the incident illumination by estimating the parameters of the global scene illumination and factoring out its effect. A number of recently developed algorithms utilize statistical methods to estimate the maximum likelihood values of the illumination parameters. This paper details the use of KL-divergence as a means of selecting estimated illumination parameter values. We provide experimental results demonstrating the usefulness of the KL-divergence technique for accurately estimating the global illumination parameters of real world images.
使用kl -散度的颜色常数
对于机器视觉任务来说,颜色是一个有用的特征。然而,它的有效性往往受到场景中测量的像素值受物体表面反射率和入射照明的影响的限制。颜色恒定算法试图通过估计全局场景照明的参数并分解其影响来计算入射照明不变的颜色特征。最近开发的一些算法利用统计方法来估计照明参数的最大似然值。本文详细介绍了使用kl -散度作为选择估计照明参数值的手段。我们提供的实验结果证明了kl -发散技术对于准确估计真实世界图像的全局照明参数的有效性。
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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