Contactless fingerprint recognition: A neural approach for perspective and rotation effects reduction

R. D. Labati, A. Genovese, V. Piuri, F. Scotti
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引用次数: 46

Abstract

Contactless fingerprint recognition systems are being researched in order to reduce intrinsic limitations of traditional biometric acquisition technologies, encompassing the release of latent fingerprints on the sensor platen, non-linear spatial distortions in the captured samples, and relevant image differences with respect to the moisture level and pressure of the fingertip on the sensor surface.Fingerprint images captured by single cameras, however, can be affected by perspective distortions and deformations due to incorrect alignments of the finger with respect to the camera optical axis. These non-idealities can modify the ridge pattern and reduce the visibility of the fingerprint details, thus decreasing the recognition accuracy. Some systems in the literature overcome this problem by computing three-dimensional models of the finger. Unfortunately, such approaches are usually based on complex and expensive acquisition setups, which limit their portability in consumer devices like mobile phones and tablets. In this paper, we present a novel approach able to recover perspective deformations and improper fingertip alignments in single camera systems. The approach estimates the orientation difference between two contactless fingerprint acquisitions by using neural networks, and permits to register the considered samples by applying the estimated rotation angle to a synthetic three-dimensional model of the finger surface. The generalization capability of neural networks offers a significant advantage by allowing processing a robust estimation of the orientation difference with a very limited need of computational resources with respect to traditional techniques. Experimental results show that the approach is feasible and can effectively enhance the recognition accuracy of single-camera biometric systems. On the evaluated dataset of 800 contactless images, the proposed method permitted to decrease the equal error rate of the used biometric system from 3.04% to 2.20%.
非接触式指纹识别:一种减少视角和旋转效果的神经方法
非接触式指纹识别系统的研究是为了减少传统生物特征采集技术的固有局限性,包括传感器平台上潜在指纹的释放,捕获样本的非线性空间扭曲,以及与传感器表面的指尖湿度和压力相关的图像差异。然而,由单个相机捕获的指纹图像可能受到由于手指相对于相机光轴的不正确对齐而导致的透视扭曲和变形的影响。这些非理想性会改变指纹脊纹,降低指纹细节的可见性,从而降低识别精度。文献中的一些系统通过计算手指的三维模型来克服这个问题。不幸的是,这些方法通常基于复杂且昂贵的获取设置,这限制了它们在手机和平板电脑等消费设备上的可移植性。在本文中,我们提出了一种在单相机系统中能够恢复视角变形和不正确的指尖对准的新方法。该方法通过神经网络估计两次非接触式指纹采集之间的方向差异,并通过将估计的旋转角度应用于手指表面的合成三维模型来注册考虑的样本。与传统技术相比,神经网络的泛化能力提供了一个显著的优势,它允许在非常有限的计算资源需求下处理方向差的鲁棒估计。实验结果表明,该方法是可行的,可以有效提高单摄像头生物识别系统的识别精度。在800张非接触式图像的评估数据集上,该方法允许将使用的生物识别系统的平均错误率从3.04%降低到2.20%。
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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