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Logarithmic transform coefficient histogram matching with spatial equalization

机译:具有空间均衡的对数变换系数直方图匹配

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In this paper we propose an image enhancement algorithm that is based on utilizing histogram data gathered from transform domain coefficients that will improve on the limitations of the histogram equalization method. Traditionally, classical histogram equalization has had some problems due to its inherent dynamic range expansion. Many images with data tightly clustered around certain intensity values can be over enhanced by standard histogram equalization, leading to artifacts and overall tonal change of the image. In the transform domain, one has control over subtle image properties such as low and high frequency content with their respective magnitudes and phases. However, due to the nature of many of these transforms, the coefficient's histograms may be so tightly packed that distinguishing them from one another may be impossible. By placing the transform coefficients in the logarithmic transform domain, it is easy to see the difference between different quality levels of images based upon their logarithmic transform coefficient histograms. Our results demonstrate that combing the spatial method of histogram equalization with logarithmic transform domain coefficient histograms achieves a much more balanced enhancement, that out performs classical histogram equalization.
机译:在本文中,我们提出了一种图像增强算法,该算法基于利用从变换域系数收集的直方图数据,这将改善直方图均衡方法的局限性。传统上,经典直方图均衡由于其固有的动态范围扩展而存在一些问题。通过标准直方图均衡化,可以将许多数据紧密围绕某些强度值聚集的图像进行过度增强,从而导致图像出现伪影和整体色调变化。在变换域中,人们可以控制微妙的图像属性,例如低频和高频内容及其各自的幅度和相位。但是,由于许多此类转换的性质,系数的直方图可能会紧紧包装在一起,以致无法将它们彼此区分开。通过将变换系数放在对数变换域中,可以很容易地根据图像的对数变换系数直方图查看不同质量级别的图像之间的差异。我们的结果表明,将直方图均衡的空间方法与对数变换域系数直方图相结合,可以实现更加均衡的增强,从而可以完成经典的直方图均衡。

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