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Left or Right Hand Classification from Fingerprint Images Using a Deep Neural Network

机译:使用深神经网络从指纹图像左或右手分类

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摘要

Fingerprint security technology has attracted a great deal of attention in recent years because of its unique biometric information that does not change over an individual's lifetime and is a highly reliable and secure way to identify a certain individuals. AFIS (Automated Fingerprint Identification System) is a system used by Korean police for identifying a specific person by fingerprint. The AFIS system, however, only selects a list of possible candidates through fingerprints, the exact individual must be found by fingerprint experts. In this paper, we designed a deep learning system using deep convolution network to categorize fingerprints as coming from either the left or right hand. In this paper, we applied the Classic CNN (Convolutional Neural Network), AlexNet, Resnet50 (Residual Network), VGG-16, and YOLO (You Only Look Once) networks to this problem, these are deep learning architectures that have been widely used in image analysis research. We used total 9,080 fingerprint images for training and 1,000 fingerprint to test the performance of the proposed model. As a result of our tests, we found the ResNet50 network performed the best at determining if an input fingerprint image came from the left or right hand with an accuracy of 96.80%.
机译:近年来,指纹安全技术由于其独特的生物信息,而不是在个人的一生中没有改变,并且是识别某些人的高度可靠和安全的方式。 AFIS(自动指纹识别系统)是韩国警察用指纹识别特定人员的系统。然而,AFIS系统仅通过指纹选择可能的候选者列表,指纹专家必须找到确切的个人。在本文中,我们设计了一种使用深度卷积网络的深度学习系统,将指纹分类为来自左手或右手的指纹。在本文中,我们应用了经典的CNN(卷积神经网络),AlexNet,Reset50(剩余网络),VGG-16和YOLO(您只有一次)网络对此问题,这些是已被广泛使用的深度学习架构在图像分析研究中。我们使用总共9,080个指纹图像进行培训和1,000个指纹,以测试所提出的模型的性能。由于我们的测试,我们发现Reset50网络在确定输入指纹图像是否来自左手或右手,精度为96.80%。

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