通过图像演化流的对比度增强

Guillermo Sapiro , Vicent Caselles
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引用次数: 29

摘要

本文介绍了一种基于图像演化流和变分公式的对比度增强框架。首先,提出了一种基于图像演化方程的直方图修正算法。我们表明,图像直方图可以修改,以实现任何给定的分布作为该微分方程的稳态解。然后,我们证明了所提出的进化方程解决了一个能量最小化问题。这为直方图修改和对比度增强提供了新的解释。这种解释完全是在图像域中制定的,与在概率域中制定的直方图修改的经典技术相反。由此,可以推导出对比度增强的新算法,例如图像和感知模型。基于能量公式及其相应的微分形式,我们证明了所提出的直方图修正算法可以与图像正则化方案相结合。这允许我们执行模拟对比度增强和去噪,避免在经典方案中常见的噪声锐化效果。给出了所提方程解存在性的理论结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contrast Enhancement via Image Evolution Flows

A framework for contrast enhancement via image evolution flows and variational formulations is introduced in this paper. First, an algorithm for histogram modification via image evolution equations is presented. We show that the image histogram can be modified to achieve any given distribution as the steady state solution of this differential equation. We then prove that the proposed evolution equation solves an energy minimization problem. This gives a new interpretation to histogram modification and contrast enhancement in general. This interpretation is completely formulated in the image domain, in contrast with classical techniques for histogram modification which are formulated in a probabilistic domain. From this, new algorithms for contrast enhancement, including, for example, image and perception models, can be derived. Based on the energy formulation and its corresponding differential form, we show that the proposed histogram modification algorithm can be combined with image regularization schemes. This allows us to perform simulations contrast enhancement and denoising, avoiding common noise sharpening effects in classical schemes. Theoretical results regarding the existence of solutions to the proposed equations are presented.

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