Fast pore matching method based on core point alignment and orientation

Houda Khmila, I. Kallel, Sami Barhoumi, N. Smaoui, H. Derbel
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引用次数: 1

Abstract

Nowadays, high-resolution fingerprint images are more and more used in the fingerprint recognition systems thanks to the recognition accuracy that they provide. Indeed, they offer more sufficient details such as sweat pores, ridges, contours, and other details. Pores have been adopted to be one of the brilliant nominees in improving the efficiency of automated fingerprint identification systems to maintain a high level of security. However, the geometric transformations, that occur during the acquisition phase, can cause several defects on the result of the matching process, hence they decline the accuracy of the recognition. To overcome this problem, alignment is often needed. This image pretreatment is classically based on complex geometric operations that are time-consuming. Otherwise, for pore matching, the majority of approaches are based only on pore coordinates. In this paper, we propose a novel pore matching method based, firstly, on only one of the singular points, namely the core points for the alignment phase, and also the valuable features used for the score calculation namely position and the orientation of pores. We assess our proposed approach using the PolyU-HRF database and we compare it to some well-known approaches of level 3 fingerprint recognition. The experimental results demonstrate that the proposed method can achieve significant performance recognition accuracy across various qualities of fingerprint images.
基于核心点对准和定向的快速孔隙匹配方法
目前,高分辨率指纹图像由于其识别精度高,在指纹识别系统中得到了越来越多的应用。事实上,它们提供了更充分的细节,如汗孔、脊线、轮廓和其他细节。在提高自动指纹识别系统的效率以保持高水平的安全性方面,毛孔已被采用为杰出的提名者之一。然而,在获取阶段发生的几何变换会对匹配过程的结果造成一些缺陷,从而降低识别的准确性。为了克服这个问题,通常需要进行校准。这种图像预处理通常是基于复杂的几何运算,耗时较长。否则,对于孔隙匹配,大多数方法仅基于孔隙坐标。本文提出了一种新颖的孔隙匹配方法,首先,该方法只基于一个奇异点,即对准阶段的核心点,以及用于分数计算的有价值的特征,即孔隙的位置和方向。我们使用u - hrf数据库评估了我们提出的方法,并将其与一些知名的3级指纹识别方法进行了比较。实验结果表明,该方法可以在不同质量的指纹图像中取得较好的识别精度。
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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