Learning image similarities via Probabilistic Feature Matching

Ziming Zhang, Ze-Nian Li, M. S. Drew
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引用次数: 13

Abstract

In this paper, we propose a novel image similarity learning approach based on Probabilistic Feature Matching (PFM).We consider the matching process as the bipartite graph matching problem, and define the image similarity as the inner product of the feature similarities and their corresponding matching probabilities, which are learned by optimizing a quadratic formulation. Further, we prove that the image similarity and the sparsity of the learned matching probability distribution will decrease monotonically with the increase of parameter C in the quadratic formulation where C ≥ 0 is a pre-defined data-dependent constant to control the sparsity of the distribution of a feature matching probability. Essentially, our approach is the generalization of a family of similarity matching approaches. We test our approach on Graz datasets for object recognition, and achieve 89.4% on Graz-01 and 87.4% on Graz-02, respectively on average, which outperform the state-of-the-art.
通过概率特征匹配学习图像相似性
本文提出了一种基于概率特征匹配的图像相似度学习方法。我们将匹配过程视为二部图匹配问题,并将图像相似度定义为特征相似度与其对应匹配概率的内积,并通过优化二次公式来学习。进一步证明了图像的相似度和学习到的匹配概率分布的稀疏度随着二次公式中参数C的增加而单调减小,其中C≥0是一个预定义的数据相关常数,用于控制特征匹配概率分布的稀疏度。本质上,我们的方法是一系列相似匹配方法的泛化。我们在Graz数据集上测试了我们的方法用于对象识别,在Graz-01和Graz-02上的平均识别率分别达到89.4%和87.4%,优于目前的水平。
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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