A More Robust Feature Correspondence for more Accurate Image Recognition

Shady Y. El-Mashad, A. Shoukry
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引用次数: 4

Abstract

In this paper, a novel algorithm for finding the optimal correspondence between two sets of image features has been introduced. The proposed algorithm pays attention not only to the similarity between features but also to the spatial layout of every matched feature and its neighbors. Unlike related methods that use geometrical relations between the neighboring features, the proposed method employees topology that survives against different types of deformations like scaling and rotation, resulting in more robust matching. The features are expressed as an undirected graph where every node represents a local feature and every edge represents adjacency between them. The topology of the resulting graph can be considered as a robust global feature of the represented object. The matching process is modeled as a graph matching problem, which in turn is formulated as a variation of the quadratic assignment problem. In this variation, a number of parameters are used to control the significance of global vs. local features to tune the performance and customize the model. The experimental results show a significant improvement in the number of correct matches using the proposed method compared to different methods.
一种更鲁棒的特征对应关系,用于更准确的图像识别
本文提出了一种寻找两组图像特征之间最优对应关系的新算法。该算法不仅关注特征之间的相似性,而且关注每个匹配特征及其相邻特征的空间布局。与使用相邻特征之间的几何关系的相关方法不同,该方法使用的拓扑结构可以抵抗不同类型的变形(如缩放和旋转),从而产生更鲁棒的匹配。特征表示为无向图,其中每个节点表示一个局部特征,每个边表示它们之间的邻接关系。结果图的拓扑结构可以被认为是所表示对象的鲁棒全局特征。匹配过程被建模为一个图匹配问题,而图匹配问题又被表述为二次分配问题的一个变体。在这种变体中,使用许多参数来控制全局特征与局部特征的重要性,以调整性能并自定义模型。实验结果表明,与其他方法相比,该方法在匹配正确率上有显著提高。
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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