Detection of Fingerprint Authenticity Based on Deep Learning Using Image Pixel Value

Harivanto, S. Sudiro, T. M. Kusuma, S. Madenda, L. M. R. Rere
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引用次数: 2

Abstract

Research on fingerprints has been done a lot, this is because of so many uses of fingerprints as an access tool to enter a system. This method is used to ensure the authenticity of authorized users. Fingerprints are used as biometric identification because fingerprints have a unique pattern that is different from every human fingerprint. The many uses of fingerprint biometric systems also cause many threats to the system, fingerprint forgery occurs so that it can be used to access the system illegally. Therefore this study proposes a system to be able to recognize the authenticity of a fingerprint. CNN is generally designed for object recognition of an image, making it suitable for recognizing fingerprint images to determine if a fingerprint is genuine or fake. The results of the evaluation of several experiments conducted obtained the highest accuracy value of 95.32% for determining the authenticity of fingerprints.
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基于图像像素值的深度学习指纹真实性检测
关于指纹的研究已经做了很多,这是因为很多人使用指纹作为进入系统的访问工具。该方法用于保证授权用户的真实性。指纹被用作生物特征识别,因为指纹具有独特的模式,不同于每个人的指纹。指纹生物识别系统的众多应用也给系统带来了诸多威胁,指纹伪造的现象时有发生,从而可以被利用来非法进入系统。因此,本研究提出了一种能够识别指纹真伪的系统。CNN一般是为图像的物体识别而设计的,适合用于识别指纹图像来判断指纹的真假。通过对多次实验的评价,得出指纹真伪鉴定的最高准确率为95.32%。
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