Refining Local 3D Feature Matching through Geometric Consistency for Robust Biometric Recognition

S. Islam, Rowan Davies
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引用次数: 5

Abstract

Local features are gaining popularity due to their robustness to occlusion and other variations such as minor deformation. However, using local features for recognition of biometric traits, which are generally highly similar, can produce large numbers of false matches. To increase recognition performance, we propose to eliminate some incorrect matches using a simple form geometric consistency, and some associated similarity measures. The performance of the approach is evaluated on different datasets and compared with some previous approaches. We obtain an improvement from 81.60% to 92.77% in rank-1 ear identification on the University of Notre Dame Biometric Database, the largest publicly available profile database from the University of Notre Dame with 415 subjects.
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基于几何一致性的局部三维特征匹配鲁棒性生物特征识别
局部特征由于其对遮挡和其他变化(如轻微变形)的鲁棒性而越来越受欢迎。然而,使用局部特征来识别生物特征通常是高度相似的,可能会产生大量的错误匹配。为了提高识别性能,我们建议使用简单形式的几何一致性和一些相关的相似性度量来消除一些不正确的匹配。在不同的数据集上评估了该方法的性能,并与之前的一些方法进行了比较。我们在圣母大学生物特征数据库(University of Notre Dame Biometric Database)上获得了从81.60%提高到92.77%的秩1耳朵识别,该数据库是圣母大学最大的公开资料数据库,共有415名受试者。
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