Shape localization, quantification and correspondence using Region Matching Algorithm

Faraz Janan, S. M. Brady
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Abstract

We propose a method for local, region-based matching of planar shapes, especially as those shapes that change over time. This is a problem fundamental to medical imaging, specifically the comparison over time of mammograms. The method is based on the non-emergence and non-enhancement of maxima, as well as the causality principle of integral invariant scale space. The core idea of our Region Matching Algorithm (RMA) is to divide a shape into a number of “salient” regions and then to compare all such regions for local similarity in order to quantitatively identify new growths or partial/complete occlusions. The algorithm has several advantages over commonly used methods for shape comparison of segmented regions. First, it provides improved key-point alignment for optimal shape correspondence. Second, it identifies localized changes such as new growths as well as complete/partial occlusion in corresponding regions by dividing the segmented region into sub-regions based upon the extrema that persist over a sufficient range of scales. Third, the algorithm does not depend upon the spatial locations of mammographic features and eliminates the need for registration to identify salient changes over time. Finally, the algorithm is fast to compute and requires no human intervention. We apply the method to temporal pairs of mammograms in order to detect potentially important differences between them.
区域匹配算法的形状定位、量化和对应
我们提出了一种局部的、基于区域的平面形状匹配方法,特别是那些随时间变化的形状。这是医学成像的一个基本问题,特别是乳房x线照片的时间比较。该方法基于最大值的不出现和不增强,以及积分不变尺度空间的因果关系原理。我们的区域匹配算法(RMA)的核心思想是将形状划分为许多“显著”区域,然后比较所有这些区域的局部相似性,以便定量识别新的生长或部分/完全闭塞。与常用的分割区域形状比较方法相比,该算法具有许多优点。首先,它提供了改进的关键点对准,以获得最佳的形状对应。其次,它通过基于在足够尺度范围内持续存在的极值将分割区域划分为子区域来识别局部变化,例如新生长以及相应区域的完全/部分闭塞。第三,该算法不依赖于乳房x线照片特征的空间位置,并且不需要通过注册来识别随时间变化的显著变化。最后,该算法计算速度快,不需要人为干预。我们将该方法应用于乳房x线照片的时间对,以检测它们之间潜在的重要差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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