Graduate School of Information, Production and Systems, Waseda University, 2-7 Hibikino, Wakamatsu Ward, Kitakyushu, Fukuoka 808-0135, Japan.
Sensors (Basel). 2018 Sep 28;18(10):3265. doi: 10.3390/s18103265.
Biometric authentication is popular in authentication systems, and gesture as a carrier of behavior characteristics has the advantages of being difficult to imitate and containing abundant information. This research aims to use three-dimensional (3D) depth information of gesture movement to perform authentication with less user effort. We propose an approach based on depth cameras, which satisfies three requirements: Can authenticate from a single, customized gesture; achieves high accuracy without an excessive number of gestures for training; and continues learning the gesture during use of the system. To satisfy these requirements respectively: We use a sparse autoencoder to memorize the single gesture; we employ data augmentation technology to solve the problem of insufficient data; and we use incremental learning technology for allowing the system to memorize the gesture incrementally over time. An experiment has been performed on different gestures in different user situations that demonstrates the accuracy of one-class classification (OCC), and proves the effectiveness and reliability of the approach. Gesture authentication based on 3D depth cameras could be achieved with reduced user effort.
生物特征认证在认证系统中很流行,而手势作为行为特征的载体具有难以模仿和包含丰富信息的优点。本研究旨在利用手势运动的三维(3D)深度信息,以较少的用户工作量进行认证。我们提出了一种基于深度相机的方法,该方法满足三个要求:可以从单个定制手势进行认证;在训练中不需要过多的手势即可达到高精度;并且可以在系统使用过程中继续学习手势。为了分别满足这些要求:我们使用稀疏自动编码器来记忆单个手势;我们采用数据增强技术来解决数据不足的问题;并且我们使用增量学习技术来允许系统随时间的推移逐渐记忆手势。在不同用户情况下的不同手势上进行了实验,证明了一类分类(OCC)的准确性,并证明了该方法的有效性和可靠性。基于 3D 深度相机的手势认证可以减少用户的工作量。