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A review of five automatic point correspondence methods for application on medical images

机译:五个自动点对应方法在医学图像上的应用综述

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摘要

Many medical image processing applications are based on the detection of corresponding features. In digital images, features are depicted by one or more digital points. Hence, feature correspondence is achieved through the estimation of point correspondences between the compared images. This paper presents and evaluates five of the most common and recent techniques for estimating corresponding points between two flat digital images. The featured techniques include Template Matching, the Iterative Closest Points algorithm, Correspondence by Sensitivity to Movement, the Self-Organizing Maps and the Artificial Immune Network algorithm. All methods are presented, mainly focusing on their distinct characteristics. The featured techniques were tested both qualitatively and quantitatively on an extensive set of medical image pairs, including images subject to both known and unknown initial geometrical deviations. Each of the five methods was evaluated on all 263 available image pairs in terms of correspondence and registration accuracy. After assessing the point correspondence accuracy of each method, it was deduced that their performance depends on the characteristics of the featured data set. However, the Artificial Immune Network approach outperformed in most cases the rest of the featured point-correspondence methods, closely followed by the Self Organizing Maps algorithm.
机译:许多医学图像处理应用都是基于对相应特征的检测。在数字图像中,特征由一个或多个数字点表示。因此,通过估计比较图像之间的点对应关系来实现特征对应关系。本文介绍并评估了五个最常用和最新的技术,用于估计两个平面数字图像之间的对应点。特色技术包括模板匹配,迭代最近点算法,对运动的敏感性对应,自组织图和人工免疫网络算法。提出了所有方法,主要侧重于它们的独特特性。在大量医学图像对上(包括受到已知和未知初始几何偏差的图像),对特色技术进行了定性和定量测试。根据对应性和配准精度,对所有263个可用图像对评估了五种方法中的每一种。在评估每种方法的点对应精度之后,推断它们的性能取决于特征数据集的特征。但是,在大多数情况下,人工免疫网络方法的性能优于其余的特征点对应方法,其次是自组织映射算法。

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