遮挡场景下人体识别的多步态数据集

J. Singh, Sakshi Arora, Sanjeev Jain, Uday Pratap Singh SoM
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引用次数: 9

摘要

生物识别步态在识别、安全、行为学习和临床分析方面具有重要意义。几十年来对步态识别的研究和公开的数据集主要集中在单个移动的人身上。但在实时应用中(如商场、火车站、机场停车场等),人们成群结队地行走,遮挡问题会影响步态识别的性能。考虑到这一问题,我们构建了一个新的多步态(动态)遮挡数据库。数据集分为两类,第一种是多步态(MG),受试者在一组中行走,第二种是单步态(SG),相同的受试者单独行走。因此,数据集包括闭塞和非闭塞的步态模式。该数据集的目的是分析一个人在一群人中行走或同一个人单独行走时的步态模式变化。该数据集对研究人员识别SG到MG也很有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-Gait Dataset for Human Recognition under Occlusion Scenario
Biometric gait has found importance in recognition, security, behavior learning and also in clinical analysis. From a few decades research on gait recognition and dataset available publically focused on a single moving person. But in real time applications (such as shopping malls, railway stations, airport parking, etc.) where people walk in a group and occlusion issue affects the gait recognition performance. Considering this issue, we constructed a new database which focused on Multi-Gait (dynamic) occlusion situation. The dataset is classified into two categories i.e. first, Multi-Gait (MG), subjects walk in a group, and second, Single-Gait (SG), same subjects walk alone. Therefore, the dataset included both occluded and non-occluded gait patterns. The objective of this dataset is to analyze gait pattern variations when a person walks in a group or the same person walk separately. This dataset is also useful for researchers for identification of SG to MG.
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