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Exploiting distinctive topological constraint of local feature matching for logo image recognition

机译:利用局部特征匹配的独特拓扑约束进行徽标图像识别

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摘要

Robust local feature matching plays an important role in the challenging task of logo image recognition. Most traditional methods consider the individual local feature but ignore the affine-invariant geometric relationship among the adjacent local features, which is essential to reduce the number of mismatching. In addition, they do matching for all of the local features and ignore that many ones are insignificant, which increase the probability of mismatching and the computation complexity. To address the two limitations, we propose a robust matching method to get the better matching results by exploiting the distinctive topological constraint together with the feature selection. In the proposed method, first we employ the distinctive topological constraint to enhance the describing ability of local features, which makes full use of the affine-invariant geometric relationship among adjacent local features for more accurate local feature matching. Second, we utilize the feature selection algorithm based on the mutual information (MI), to filter out most insignificant local features before matching, which is efficient and effective to guarantee the performance of local feature matching. We evaluated the proposed method on two challenging datasets, i.e, FlickrLogos-32 and FlickrLogos-27, and achieve superior performance against the state-of-the-art methods in the literature.
机译:强大的局部特征匹配在徽标图像识别这一具有挑战性的任务中起着重要作用。大多数传统方法都考虑单个局部特征,但忽略了相邻局部特征之间的仿射不变几何关系,这对于减少不匹配的数量至关重要。另外,它们确实对所有局部特征进行匹配,而忽略了许多无关紧要的特征,这增加了失配的可能性和计算复杂性。为了解决这两个限制,我们提出了一种鲁棒的匹配方法,通过利用独特的拓扑约束和特征选择来获得更好的匹配结果。在提出的方法中,首先我们利用独特的拓扑约束来增强局部特征的描述能力,该方法充分利用了相邻局部特征之间的仿射不变几何关系,可以更精确地进行局部特征匹配。其次,我们利用基于互信息(MI)的特征选择算法,在匹配之前滤除了大部分无关紧要的局部特征,这是高效,有效的保证局部特征匹配的性能。我们在两个具有挑战性的数据集(即FlickrLogos-32和FlickrLogos-27)上评估了所提出的方法,并取得了优于文献中最新技术的性能。

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