TPS-SURF-SAC matching approach of feature point applied to deformation measurement of nonrigid tissues from MR images

Xubing Zhang, S. Hirai
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引用次数: 3

Abstract

Due to the nonlinear deformation of the nonrigid and nonuniform biological tissues, it is difficult whereas important to correctly match a number of feature points distributed somewhat uniform in the tissues from MR images for deformation measurement. In this paper, the authors present TPS-SURF-SAC matching method and mismatching elimination method based on TPS clustering. Firstly the matching region is identified by a TPS for every query point. Then the SURF descriptors and the proposed Spatial Association Correspondence (SAC) method are combined to match the feature points. Finally, using clustering the coordinate differences between the matching points obtained using TPS-SURF-SAC method and the matching points matched by TPS model, most of wrong match points are eliminated. After every iterative processing of matching and mismatching elimination, the updated TPS model becomes more accurate and more correctly matched points can be identified than that of the previous iteration. The experimental results showed that the proposed method outperformed the single SURF and SIFT methods.
特征点TPS-SURF-SAC匹配方法在MR图像非刚性组织变形测量中的应用
由于非刚性和非均匀生物组织的非线性变形,从MR图像中正确匹配组织中分布较为均匀的多个特征点进行变形测量是困难而又重要的。本文提出了基于TPS聚类的TPS- surf - sac匹配方法和错配消除方法。首先,对每个查询点使用TPS识别匹配区域;然后结合SURF描述符和空间关联对应(SAC)方法进行特征点匹配。最后,对TPS- surf - sac方法得到的匹配点与TPS模型匹配的匹配点之间的坐标差进行聚类,消除了大部分错误匹配点。经过每一次匹配和消错的迭代处理,更新后的TPS模型比前一次迭代更加准确,能够识别出更多正确的匹配点。实验结果表明,该方法优于单一的SURF和SIFT方法。
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