A Face-Recognition Approach Using Deep Reinforcement Learning Approach for User Authentication

Ping Wang, Wen-Hui Lin, K. Chao, Chi-Chun Lo
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引用次数: 21

Abstract

Numerous crime-related security concerns exist in e-commerce transactions recently. User authentication for mobile payment has numerous approaches including face recognition, iris scan, and fingerprint scan to identify user's true identity by comparing the biometric features of users with patterns in the signature database. Existing studies on the face recognition problem focus mainly on the static analysis to determine the face recognition precision by examining the facial features of images with different facial expressions for users rather than the dynamic aspects where images were are often vague affected by lighting changes with different poses. Because the lighting, facial expressions, and facial details varied in the face recognition process. Consequently, it limits the effectiveness of scheme with which to determine the true identity. Accordingly, this study focused on a face recognition process under the situation of vague facial features using deep reinforcement learning (DRL) approach with convolutional neuron networks (CNNs) thru facial feature extraction, transformation, and comparison to determine the user identity for mobile payment. Specifically, the proposed authentication scheme uses back propagation algorithm to effectively improve the accuracy of face recognition using feed-forward network architecture for CNNs. Overall, the proposed scheme provided a higher precision of face recognition (100% at gamma correction γlocated in [0.5, 1.6]) compared with the average precision for face image (approximately 99.5% at normal lighting γ=1) of the existing CNN schemes with ImageNet 2012 Challenge training data set.
一种基于深度强化学习的人脸识别方法用于用户认证
最近在电子商务交易中存在着许多与犯罪有关的安全问题。移动支付的用户认证有多种方法,包括人脸识别、虹膜扫描和指纹扫描,通过将用户的生物特征与签名库中的模式进行比较,来识别用户的真实身份。现有的人脸识别问题的研究主要集中在静态分析上,通过检测用户不同面部表情图像的面部特征来确定人脸识别的精度,而不是动态方面,由于不同姿势的光线变化,图像往往模糊。因为在人脸识别过程中,光线、面部表情和面部细节都是不同的。因此,它限制了用于确定真实身份的方案的有效性。因此,本研究针对模糊人脸特征情况下的人脸识别过程,采用深度强化学习(DRL)方法结合卷积神经元网络(cnn),通过人脸特征提取、变换、比对,确定移动支付用户身份。具体而言,本文提出的认证方案采用反向传播算法,利用前馈网络架构对cnn进行人脸识别,有效提高了识别精度。总体而言,与使用ImageNet 2012 Challenge训练数据集的现有CNN方案的人脸图像平均精度(在正常光照下约为99.5% γ=1)相比,该方案提供了更高的人脸识别精度(在伽马校正时为100%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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