Gait recognition is the characterization of unique biometric patterns associated with each individual which can be utilized to identify a person without direct contact. A public gait database with a relatively large number of subjects can provide a great opportunity for future studies to build and validate gait authentication models. The goal of this study is to introduce a comprehensive gait database of 93 human subjects who walked between two endpoints (320 meters) during two different sessions and record their gait data using two smartphones, one attached to the right thigh and another one on the left side of the waist. This data is collected to be utilized by a deep learning-based method that requires enough time points. The metadata including age, gender, smoking, daily exercise time, height, and weight of an individual is recorded. this data set is publicly available.
翻译:承认Gait是一种与每个人有关的独特生物鉴别模式的特征,可以用来识别没有直接接触的人。一个公共行迹数据库,其主题数量相对较多,可为今后建立和验证行迹认证模型的研究提供巨大机会。这项研究的目的是引入一个93个人类主体的综合行迹数据库,这些主体在两次不同的会议期间在两个端点(320米)之间行走,并使用两个智能手机记录行踪数据,一个与右大腿相连,另一个与腰左侧相连。这些数据的收集工作将采用深层次的学习方法,这种方法需要足够的时间点。数据包括个人的年龄、性别、吸烟、日常运动时间、身高和体重。这些数据集是公开的。