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Graphic Matching Based on Shape Contexts and Reweighted Random Walks

机译:基于形状上下文和加权随机游走的图形匹配

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Graphic matching is a very critical issue in all aspects of computer vision. In this paper, a new graphics matching algorithm combining shape contexts and reweighted random walks was proposed. On the basis of the local descriptor, shape contexts, the reweighted random walks algorithm was modified to possess stronger robustness and correctness in the final result. Our main process is to use the descriptor of the shape contexts for the random walk on the iteration, of which purpose is to control the random walk probability matrix. We calculate bias matrix by using descriptors and then in the iteration we use it to enhance random walks' and random jumps' accuracy, finally we get the one-to-one registration result by discretization of the matrix. The algorithm not only preserves the noise robustness of reweighted random walks but also possesses the rotation, translation, scale invariance of shape contexts. Through extensive experiments, based on real images and random synthetic point sets, and comparisons with other algorithms, it is confirmed that this new method can produce excellent results in graphic matching.
机译:图形匹配在计算机视觉的各个方面都是一个非常关键的问题。本文提出了一种新的结合形状上下文和加权随机游走的图形匹配算法。在局部描述符,形状上下文的基础上,对重加权随机游走算法进行了修改,使其在最终结果中具有更强的鲁棒性和正确性。我们的主要过程是将形状上下文的描述符用于迭代中的随机游动,其目的是控制随机游动概率矩阵。我们使用描述符来计算偏差矩阵,然后在迭代中使用它来增强随机游走和随机跳跃的准确性,最后通过矩阵离散化获得一对一的配准结果。该算法不仅保留了加权后的随机游走的噪声鲁棒性,而且还具有形状上下文的旋转,平移,尺度不变性。通过大量的实验,基于真实的图像和随机的合成点集,并与其他算法进行比较,证实了这种新方法可以在图形匹配中产生出色的结果。

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