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Nonlinear Unsharp Masking for Mammogram Enhancement

机译:增强乳房X线照片的非线性钝化遮罩

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摘要

This paper introduces a new unsharp masking (UM) scheme, called nonlinear UM (NLUM), for mammogram enhancement. The NLUM offers users the flexibility 1) to embed different types of filters into the nonlinear filtering operator; 2) to choose different linear or nonlinear operations for the fusion processes that combines the enhanced filtered portion of the mammogram with the original mammogram; and 3) to allow the NLUM parameter selection to be performed manually or by using a quantitative enhancement measure to obtain the optimal enhancement parameters. We also introduce a new enhancement measure approach, called the second-derivative-like measure of enhancement, which is shown to have better performance than other measures in evaluating the visual quality of image enhancement. The comparison and evaluation of enhancement performance demonstrate that the NLUM can improve the disease diagnosis by enhancing the fine details in mammograms with no a priori knowledge of the image contents. The human-visual-system-based image decomposition is used for analysis and visualization of mammogram enhancement.
机译:本文介绍了一种新的反锐化掩膜(UM)方案,称为非线性UM(NLUM),用于增强X光检查。 NLUM为用户提供了灵活性:1)将不同类型的滤波器嵌入到非线性滤波算子中; 2)为融合过程选择不同的线性或非线性运算,以将乳房X线照片的增强滤波部分与原始乳房X线照片相结合; 3)允许手动或通过使用定量增强措施来获得最佳增强参数的NLUM参数选择。我们还引入了一种新的增强措施方法,即所谓的类似于二阶导数的增强措施,在评估图像增强的视觉质量方面,其表现出比其他措施更好的性能。增强性能的比较和评估表明,NLUM可以通过增强X光照片中的精细细节来改善疾病诊断,而无需先验图像内容。基于人类视觉系统的图像分解用于乳房X光检查增强的分析和可视化。

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