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A new algorithm of global feature matching based on triangle regions for image registration

机译:一种基于三角形区域的全局特征匹配新算法

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Feature matching is a crucial and challenging process in feature-based image registration. Mismatch is always inevitable in image registration for the feature matching methods that just use local features, no matter how powerful the discrimination of the feature point descriptor is. To solve this problem, in this paper, relative moment affine invariants are used to compare the similarity of two triangles, then a new global feature matching method is proposed to match the feature points accurately based on graph structure. In the point matching process, Genetic Algorithm is applied to find two most similar graphs that are constructed by the corresponding survivor points from two images. The proposed algorithm can deal with images of affine transformation, large scale and low overlap. Compared with traditional Iterative Closest Point (ICP), normalized cross-correlation (NCC) and Coherent Point Drift (CPD), which register aerial images captured on the sea, the proposed algorithm works well with high accuracy and stability even when the point sets have a lot of outliers.
机译:特征匹配是基于特征的图像配准中至关重要且具有挑战性的过程。对于仅使用局部特征的特征匹配方法而言,无论特征点描述符的辨别力有多强,在图像配准中总是会出现不匹配的情况。为了解决这个问题,本文采用相对矩仿射不变量来比较两个三角形的相似度,然后提出了一种新的全局特征匹配方法来基于图结构准确地匹配特征点。在点匹配过程中,应用遗传算法从两个图像中找到由对应的幸存者点构成的两个最相似的图。该算法可以处理仿射变换,大规模,低重叠的图像。与记录海上捕获的空中图像的传统迭代最近点(ICP),归一化互相关(NCC)和相干点漂移(CPD)相比,即使该点集具有很多离群值。

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