基于深度神经网络的非接触式指纹识别

Abderrahmane Herbadji, N. Guermat, Z. Akhtar
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引用次数: 0

摘要

为了开发自动和准确的人类识别系统,深度学习在现实世界的生物识别应用中越来越普遍。指纹是一种重要的鉴别性生物特征,具有较高的可靠性和唯一性,在执法、法医以及移动设备用户认证等领域得到了广泛的应用。近年来,非接触式指纹识别技术得到了迅速的发展,这得益于更加卫生和无处不在的个人识别技术。本文提出了基于深度神经网络的非接触式指纹识别解决方案。更具体地说,我们展示了如何将现有的dnn部署为非接触式指纹的特征提取器。对336个公开数据集的实验分析证明了基于dnns的特征提取器的有效性。此外,实验结果表明,与最先进的纹理描述符相比,该方法具有最佳的识别性能。
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Deep neural networks based contactless fingerprint recognition
For developing automatic and accurate system for human recognition, deep learning is now progressively becoming common in real-world biometrics applications. Fingerprint is one of the most important discriminative biometric characteristic due to its high reliability and uniqueness properties, which has led to a widespread use by law enforcement, forensic as well as in mobile devices user authentication. Contactless fingerprint recognition has achieved rapid development in recent years thanks to more hygienic and ubiquitous personal identification techniques. In this paper, we present deep neural networks (DNNs) based solutions for contactless fingerprint identification. More specifically, we show how existing DNNs can be deployed as a feature extractor for contactless fingerprint. Experimental analyses on publically available dataset with 336 subjects demonstrate the effectiveness of DNNs-based feature extractors. Moreover, experimental results illustrate best recognition performance in comparison with state-of-the-art texture descriptors.
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