Finding Matches in a Haystack: A Max-Pooling Strategy for Graph Matching in the Presence of Outliers

Minsu Cho, Jian Sun, Olivier Duchenne, J. Ponce
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引用次数: 121

Abstract

A major challenge in real-world feature matching problems is to tolerate the numerous outliers arising in typical visual tasks. Variations in object appearance, shape, and structure within the same object class make it harder to distinguish inliers from outliers due to clutters. In this paper, we propose a max-pooling approach to graph matching, which is not only resilient to deformations but also remarkably tolerant to outliers. The proposed algorithm evaluates each candidate match using its most promising neighbors, and gradually propagates the corresponding scores to update the neighbors. As final output, it assigns a reliable score to each match together with its supporting neighbors, thus providing contextual information for further verification. We demonstrate the robustness and utility of our method with synthetic and real image experiments.
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在大海捞针中寻找匹配:存在异常值的图匹配的最大池化策略
现实世界中特征匹配问题的一个主要挑战是容忍典型视觉任务中出现的大量异常值。同一对象类中对象外观、形状和结构的变化使得由于杂乱而难以区分内线和离群值。在本文中,我们提出了一种图匹配的最大池化方法,它不仅具有抗变形的能力,而且对异常值也有很强的容忍度。该算法使用最有希望的邻居来评估每个候选匹配,并逐渐传播相应的分数来更新邻居。作为最终输出,它为每个匹配及其支持的邻居分配一个可靠的分数,从而为进一步验证提供上下文信息。我们通过合成和真实图像实验证明了该方法的鲁棒性和实用性。
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