高分辨率掌纹识别的自动区域分割:面向法医场景

Ruifang Wang, D. Ramos, Julian Fierrez, Ram P. Krish
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引用次数: 9

摘要

近年来,基于指间、下鱼际和鱼际三个掌纹区域不同区域可分辨性的概念,提出了一种基于区域融合的高分辨率掌纹匹配策略,应用于法医和民用领域。这种匹配策略需要精确的自动区域分割技术,因为人工区域分割耗时。在这项工作中,我们开发了基于基准点检测的高分辨率掌纹识别自动区域分割技术,该技术可以进一步应用于法医应用。首先,将Canny边缘检测器应用于全掌纹,得到梯度大小和强边缘;然后利用凸包对梯度幅值图像及其左右差分图像和强边缘图像进行检测,得到第一基准点即心线端点;根据第一个基准点的位置和方向以及两个基准点之间的统计平均距离来估计第二个基准点,即生命线的终点。最后,基于两个基准点及其垂直平分线生成分割的手掌区域。为了评估我们的区域分割方法的准确性,我们比较了在公共高分辨率掌纹数据库THUPALMLAB上对全掌纹图像进行的自动分割和手动分割。指间区、鱼际区和鱼际区区域错误率分别为15.72%、17.05%和21.38%。相对于全掌纹图像,总错误率为19.54%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic region segmentation for high-resolution palmprint recognition: Towards forensic scenarios
Recently, a novel matching strategy based on regional fusion for high resolution palmprint recognition arises for both forensic and civil applications, under the concept of different regional discriminability of three palm regions, i.e., interdigital, hypothenar and thenar. This matching strategy requires accurate automatic region segmentation techniques since manual region segmentation is time consuming. In this work, we develop automatic region segmentation techniques based on datum point detection for high-resolution palmprint recognition which can be further applied to forensic applications. Firstly, Canny edge detector is applied to a full palmprint to obtain gradient magnitudes and strong edges. Then a first datum point, i.e., the endpoint of heart line, is detected by using convex hull on gradient magnitude image and its left/right differential image and strong edge image. A second datum point, i.e., the endpoint of life line, is estimated based on the position and direction of the first datum point and statistical average distance between the two datum points. Finally, segmented palm regions are generated based on the two datum points and their perpendicular bisector. To evaluate the accuracy of our region segmentation method, we compare the automatic segmentation with manual segmentation performed on a public high resolution palmprint database THUPALMLAB with full palmprint images. The regional error rates of interdigital, thenar and hypothenar regions are 15.72%, 17.05% and 21.38% respectively. And the total error rate is 19.54% relative to full palmprint images.
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