Identity Recognition based on Convolutional Neural Networks Using Gait Data

F. Faraji, F. Lotfi, M. Majdolhosseini, M. Jafarian, H. Taghirad
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Abstract

As a critical part of any security system, identity recognition has become paramount among researchers. In this regard, several methods are presented while considering various sensors and data. In particular, gait data yields rich information about a person, including some exclusive moving patterns which can be utilized to distinguish between different individuals. On the other hand, convolutional neural networks are proved to be applicable for structured data, especially images. In this article, 12 markers are considered in gathering the gait data, each representing a lower-body joint location. Then, utilizing the gait data in a 2D tensor form, three different convolutional neural networks are trained to recognize the identities. Taking light architectures into account, this approach is implementable in realtime application. The obtained result shows the promising capability of the proposed method being used in identity recognition.
基于卷积神经网络的步态数据身份识别
身份识别作为安全系统的重要组成部分,已成为研究人员关注的焦点。在这方面,在考虑各种传感器和数据的情况下,提出了几种方法。特别是,步态数据产生了关于一个人的丰富信息,包括一些可以用来区分不同个体的独特运动模式。另一方面,卷积神经网络被证明适用于结构化数据,特别是图像。在本文中,在收集步态数据时考虑了12个标记,每个标记代表一个下半身关节位置。然后,利用二维张量形式的步态数据,训练三种不同的卷积神经网络来识别身份。考虑到轻架构,这种方法在实时应用中是可行的。结果表明,该方法在身份识别中具有良好的应用前景。
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