一种基于神经的非触摸指纹图像细节对识别方法

R. D. Labati, V. Piuri, F. Scotti
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引用次数: 29

摘要

接触式传感器是商业和国土安全应用中用于捕获指纹图像的传统设备。非接触式系统通过视觉系统实现指纹捕获,避免用户触摸生物识别设备的任何部分。通常,手指被放置在一个光学系统的工作区域与CCD模块耦合。采集到的手指上的光纹与用户指尖的真实脊谷有关,但与传统指纹图像存在重要差异。这些差异与多种因素有关,如光线、焦点、模糊和皮肤的颜色。遗憾的是,针对基于触摸传感器采集的指纹图像设计的身份比对方法,在直接应用于非触摸图像时,无法获得足够的准确性。最近的研究表明,多视图分析和三维重建可以提高这类系统的最终生物识别精度。在本文中,我们提出了一种新的方法来识别同一手指的两个视图之间的细节对,这是指纹模板三维重建的重要步骤。该方法在后续任务中可分:首先,执行图像预处理步骤;其次,在两幅图像中选择一组候选细节对,然后创建候选细节对列表;最后,以两个细节为中心生成一组局部特征,并由基于训练好的神经网络的分类器进行处理。系统的输出是输入图像中存在的细节对的列表。实验表明,该方法在不同的光照条件和设置配置下都是可行和准确的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A neural-based minutiae pair identification method for touch-less fingerprint images
Contact-based sensors are the traditional devices used to capture fingerprint images in commercial and homeland security applications. Contact-less systems achieve the fingerprint capture by vision systems avoiding that users touch any parts of the biometric device. Typically, the finger is placed in the working area of an optics system coupled with a CCD module. The captured light pattern on the finger is related to the real ridges and valleys of the user fingertip, but the obtained images present important differences from the traditional fingerprint images. These differences are related to multiple factors such as light, focus, blur, and the color of the skin. Unfortunately, the identity comparison methods designed for fingerprint images captured with touch-based sensors do not obtain sufficient accuracy when are directly applied to touch-less images. Recent works show that multiple views analysis and 3D reconstruction can enhance the final biometric accuracy of such systems. In this paper we propose a new method for the identification of the minutiae pairs between two views of the same finger, an important step in the 3D reconstruction of the fingerprint template. The method is divisible in the sequent tasks: first, an image preprocessing step is performed; second, a set of candidate minutiae pairs is selected in the two images, then a list of candidate pairs is created; last, a set of local features centered around the two minutiae is produced and processed by a classifier based on a trained neural network. The output of the system is the list of the minutiae pairs present in the input images. Experiments show that the method is feasible and accurate in different light conditions and setup configurations.
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