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Gray-level grouping (GLG): an automatic method for optimized image contrast enhancement - part II: the variations

机译:灰度分组(GLG):一种用于优化图像对比度增强的自动方法-第二部分:变体

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This is Part II of the paper, "Gray-Level Grouping (GLG): an Automatic Method for Optimized Image Contrast Enhancement". Part I of this paper introduced a new automatic contrast enhancement technique: gray-level grouping (GLG). GLG is a general and powerful technique, which can be conveniently applied to a broad variety of low-contrast images and outperforms conventional contrast enhancement techniques. However, the basic GLG method still has limitations and cannot enhance certain classes of low-contrast images well, e.g., images with a noisy background. The basic GLG also cannot fulfill certain special application purposes, e.g., enhancing only part of an image which corresponds to a certain segment of the image histogram. In order to break through these limitations, this paper introduces an extension of the basic GLG algorithm, selective gray-level grouping (SGLG), which groups the histogram components in different segments of the grayscale using different criteria and, hence, is able to enhance different parts of the histogram to various extents. This paper also introduces two new preprocessing methods to eliminate background noise in noisy low-contrast images so that such images can be properly enhanced by the (S)GLG technique. The extension of (S)GLG to color images is also discussed in this paper. SGLG and its variations extend the capability of the basic GLG to a larger variety of low-contrast images, and can fulfill special application requirements. SGLG and its variations not only produce results superior to conventional contrast enhancement techniques, but are also fully automatic under most circumstances, and are applicable to a broad variety of images.
机译:这是论文的第二部分,“灰度分组(GLG):一种用于优化图像对比度增强的自动方法”。本文的第一部分介绍了一种新的自动对比度增强技术:灰度分组(GLG)。 GLG是一种通用而强大的技术,可以方便地应用于各种低对比度图像,并且性能优于常规的对比度增强技术。然而,基本的GLG方法仍然具有局限性,并且不能很好地增强某些类别的低对比度图像,例如,具有嘈杂背景的图像。基本的GLG也不能满足某些特殊的应用目的,例如仅增强图像的与图像直方图的特定部分相对应的部分。为了克服这些限制,本文介绍了基本GLG算法的扩展,即选择性灰度分组(SGLG),该算法使用不同的标准将灰度的不同段中的直方图分量分组,因此能够增强直方图的不同部分有不同程度。本文还介绍了两种新的预处理方法,以消除嘈杂的低对比度图像中的背景噪声,以便可以通过(S)GLG技术适当地增强此类图像。本文还讨论了(S)GLG向彩色图像的扩展。 SGLG及其变体将基本GLG的功能扩展到了多种低对比度图像,并且可以满足特殊的应用要求。 SGLG及其变体不仅可产生优于传统对比度增强技术的结果,而且在大多数情况下也是全自动的,并且适用于各种图像。

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