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A monotonic constrained regression framework for histogram equalization and specification

机译:用于直方图均衡化和规范化的单调约束回归框架

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This paper introduces a general framework for image contrast enhancement based on histogram equalization (HE) and specification (HS). Traditional HE and HS are simple and effective, but they often amplify the noise level of the image while enhancing it. Furthermore, they may not utilize the entire dynamic range due to the discrete nature of the image. In our framework, image contrast enhancement is posed as a nonparametric monotonic constrained regression problem, in which both the two boundary values and the slopes of the brightness transform function are controlled. We show that such a framework provides an effective way to avoid enlarging the noise level and to utilize the entire dynamic range while performing HS (and also its special case HE). Our method can thus reduce the production of visual artifacts while enhancing the image.
机译:本文介绍了一种基于直方图均衡化(HE)和规范(HS)的图像对比度增强的通用框架。传统的HE和HS简单有效,但是它们通常会在增强图像噪声水平的同时对其进行放大。此外,由于图像的离散性质,它们可能无法利用整个动态范围。在我们的框架中,图像对比度增强被提出为非参数单调约束回归问题,其中两个边界值和亮度变换函数的斜率均受到控制。我们表明,这种框架提供了一种有效的方法,可避免在执行HS(以及其特例HE)的同时扩大噪声水平并利用整个动态范围。因此,我们的方法可以在增强图像的同时减少视觉伪像的产生。

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