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Fingerprint pore matching using deep features

机译:指纹孔匹配使用深度特征

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摘要

As a popular living fingerprint feature, sweat pore has been adopted to build robust high resolution automated fingerprint recognition systems (AFRSs). Pore matching is an important step in high resolution fingerprint recognition. This paper proposes a novel pore matching method with high recognition accuracy. The method mainly solves the pore representation problem in the state-of-the-art direct pore matching method. By making full use of the diversity and large quantities of sweat pores on fingerprints, deep convolutional networks are carefully designed to learn a deep feature (denoted as DeepPoreID) for each pore. The inter-class difference and intra-class similarity of pore patch pairs can be well solved using deep learning. The DeepPoreID is then used to describe the local feature for each pore and finally integrated into the classical direct pore matching method. More specifically, pore patches, which are cropped from both Query and Template fingerprint images, are imported into the well-trained networks to generate DeepPoreID for pore representation. The similarity between those DeepPoreIDs are then obtained by calculating the Euclidian Distance between them. Subsequently, one-to-many coarse pore correspondences are established via comparing their similarity. Finally, classical Weighted RANdom SAmple Consensus (WRANSAC) is employed to pick true pore correspondences from coarse ones. The experiments carried on the two public high resolution fingerprint database have shown the effectiveness of the proposed DeepPoreID, especially for fingerprint matching with small image size. Meanwhile, better recognition accuracy is achieved by the proposed method when compared with the existing state-of-the-art methods. About 35% rise in equal error rate (EER) and about 30% rise in FMR1000 when compared with the best result evaluated on the database with image size of 320 x 240 pixels. (C) 2020 Elsevier Ltd. All rights reserved.
机译:作为流行的生活指纹特征,已经采用了汗孔来构建坚固的高分辨率自动指纹识别系统(AFRSS)。孔隙匹配是高分辨率指纹识别的重要一步。本文提出了一种具有高识别精度的新型孔匹配方法。该方法主要解决了最先进的直接孔匹配方法中的孔代表问题。通过在指纹上充分利用多样性和大量的汗毛孔,精心设计的深度卷积网络,以学习每个孔的深度特征(表示为Deadporeid)。使用深度学习可以很好地解决孔隙对对的阶级差异和阶级相似性。然后使用DeepporeId来描述每个孔的局部特征,最后集成到经典直接孔匹配方法中。更具体地,从查询和模板指纹图像裁剪的孔隙斑块被导入到训练有素的网络中以产生孔径表示的深层疗程。然后通过计算它们之间的欧几里多距离来获得那些深层疗程之间的相似性。随后,通过比较它们的相似性建立一对多粗孔对应关系。最后,使用经典加权随机样本共识(WRANSAC)从粗糙的时挑选真正的孔隙对应关系。在两个公共高分辨率指纹数据库上进行的实验表明了拟议的深皮诺的有效性,特别是对于具有小图像尺寸的指纹匹配。同时,与现有最先进的方法相比,通过所提出的方法实现更好的识别精度。与在数据库中的最佳结果相比,在数据库中评估的最佳结果相比,相同的错误率(eer)的同等错误率(eer)的增加约为35%,并且FMR1000增加了约30%。 (c)2020 elestvier有限公司保留所有权利。

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