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A CNN-Based Framework for Comparison of Contactless to Contact-Based Fingerprints

机译:基于CNN的非接触式指纹与基于接触式指纹比较的框架

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摘要

Accurate comparison of contactless 2-D fingerprint images with contact-based fingerprints is critical for the success of emerging contactless 2-D fingerprint technologies, which offer more hygienic and deformation-free acquisition of fingerprint features. Convolutional neural networks (CNNs) have shown remarkable capabilities in biometrics recognition. However, there has been almost nil attempt to match fingerprint images using CNN-based approaches. This paper develops a CNN-based framework to accurately match contactless and contact-based fingerprint images. Our framework first trains a multi-Siamese CNN using fingerprint minutiae, respective ridge map and specific region of ridge map. This network is used to generate deep fingerprint representation using a distance-aware loss function. Deep fingerprint representations generated in such multi-Siamese network are concatenated for more accurate cross comparison. The proposed approach for cross-fingerprint comparison is evaluated on two publicly available databases containing contactless 2-D fingerprints and respective contact-based fingerprints. Our experiments presented in this paper consistently achieve outperforming results over several popular deep learning architectures and over contactless to contact-based fingerprints comparison methods in the literature.
机译:非接触式2D指纹图像与基于接触式指纹的准确比较对于新兴的非接触式2D指纹技术的成功至关重要,该技术可提供更卫生且无变形的指纹特征。卷积神经网络(CNN)在生物识别方面已显示出非凡的功能。然而,几乎没有尝试使用基于CNN的方法来匹配指纹图像。本文开发了一种基于CNN的框架,以准确匹配非接触式和基于接触式的指纹图像。我们的框架首先使用指纹细节,各自的山脊图和山脊图的特定区域来训练多暹罗CNN。该网络用于使用距离感知损失函数生成深度指纹表示。将在这种多暹罗网络中生成的深层指纹表示连接起来,以进行更准确的交叉比较。在两个包含非接触式2D指纹和相应的基于接触的指纹的公共数据库中评估了用于跨指纹比较的建议方法。我们在本文中提出的实验在几种流行的深度学习体系结构以及文献中基于非接触式和基于接触的指纹比较方法上始终取得了优异的结果。

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