Towards Gesture-Based User Authentication

Kam Lai, J. Konrad, P. Ishwar
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引用次数: 34

Abstract

Video cameras are extensively used in modern surveillance systems to detect, track, and recognize, objects, people, and anomalies. Their use in user authentication, however, has been limited primarily to close-range face recognition systems. In this paper, we explore user authentication based on gestures captured by a video camera. Unlike pure biometrics, such as fingerprints, iris scans, and faces, gesture-based authentication combines irrevocable biometric information, such as the shapes and relative sizes of body parts, with voluntary movements which can be revoked. Our authentication method applies the empirical feature covariance matrix framework that has previously been used for tracking, face localization, and action recognition, to features extracted from body silhouettes. We have tested the performance of our algorithm in both user classification and user authentication on a database of 20 individuals performing 8 different gestures. We have obtained a 93-99% Correct Classification Rate (CCR) for user classification and a 5-6% Equal Error Rate (EER) for user authentication on single gestures from this dataset. This is a very encouraging result suggesting that gesture-based user authentication may be feasible in scenarios with a limited number of users.
迈向基于手势的用户认证
摄像机广泛应用于现代监控系统中,用于检测、跟踪和识别物体、人员和异常情况。然而,它们在用户认证中的应用主要局限于近距离面部识别系统。在本文中,我们探索了基于摄像机捕获的手势的用户身份验证。与指纹、虹膜扫描和面部等纯粹的生物识别技术不同,基于手势的身份验证结合了不可撤销的生物识别信息,如身体部位的形状和相对大小,以及可以撤销的自愿运动。我们的认证方法将之前用于跟踪、人脸定位和动作识别的经验特征协方差矩阵框架应用于从人体轮廓中提取的特征。我们在一个数据库中测试了算法在用户分类和用户身份验证方面的性能,数据库中有20个人执行8种不同的手势。我们从该数据集中获得了93-99%的用户分类正确率(CCR)和5-6%的用户身份验证等错误率(EER)。这是一个非常令人鼓舞的结果,表明基于手势的用户身份验证在用户数量有限的情况下是可行的。
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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