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Multi-Siamese networks to accurately match contactless to contact-based fingerprint images

机译:多暹罗网络可将非接触式指纹图像与基于接触式指纹图像准确匹配

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Contactless 2D fingerprint identification is more hygienic, and enables deformation free imaging for higher accuracy. Success of such emerging contactless fingerprint technologies requires advanced capabilities to accurately match such fingerprint images with the conventional fingerprint databases which have been developed and deployed in last two decades. Convolutional neural networks have shown remarkable success for the face recognition problem. However, there has been very few attempts to develop CNN-based methods to address challenges in fingerprint identification problems. This paper proposes a multi-Siamese CNN architecture for accurately matching contactless and contact-based fingerprint images. In addition to the fingerprint images, hand-crafted fingerprint features, e.g. minutiae and core point, are also incorporated into the proposed architecture. This multi-Siamese CNN is trained using the fingerprint images and extracted features. Therefore, a more robust deep fingerprint representation is formed from the concatenation of deep feature vectors generated from multi-networks. In order to demonstrate the effectiveness of the proposed approach, a publicly available database consisting of contact-based and respective contactless finger-prints is utilized. The experimental evaluations presented in this paper achieve outperforming results, over other CNN-based methods and the traditional fingerprint cross matching methods, and validate our approach.
机译:非接触式2D指纹识别更卫生,并且可以实现无变形成像,从而获得更高的精度。这种新兴的非接触式指纹技术的成功需要先进的功能,才能将这种指纹图像与最近二十年来开发和部署的常规指纹数据库进行精确匹配。卷积神经网络已经在人脸识别问题上取得了巨大的成功。但是,很少有尝试开发基于CNN的方法来解决指纹识别问题的挑战。本文提出了一种用于精确匹配非接触式和基于接触式指纹图像的多暹罗CNN架构。除指纹图像外,还具有手工制作的指纹功能,例如细节和核心点也被合并到所提议的体系结构中。使用指纹图像和提取的特征对这种多暹罗CNN进行训练。因此,从多网络生成的深度特征向量的级联形成了更鲁棒的深度指纹表示。为了证明所提出的方法的有效性,利用了由基于接触的指纹和相应的非接触指纹组成的可公开获得的数据库。与其他基于CNN的方法和传统的指纹交叉匹配方法相比,本文提出的实验评估取得了优异的结果,并验证了我们的方法。

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