School of Physical Education, Sichuan Normal University, Chengdu 610101, China.
Department of Physical Education, Central South University, Changsha 410083, China.
Sensors (Basel). 2021 May 17;21(10):3496. doi: 10.3390/s21103496.
Human identification based on motion capture data has received signification attentions for its wide applications in authentication and surveillance systems. The optical motion capture system (OMCS) can dynamically capture the high-precision three-dimensional locations of optical trackers that are implemented on a human body, but its potential in applications on gait recognition has not been studied in existing works. On the other hand, a typical OMCS can only support one player one time, which limits its capability and efficiency. In this paper, our goals are investigating the performance of OMCS-based gait recognition performance, and realizing gait recognition in OMCS such that it can support multiple players at the same time. We develop a gait recognition method based on decision fusion, and it includes the following four steps: feature extraction, unreliable feature calibration, classification of single motion frame, and decision fusion of multiple motion frame. We use kernel extreme learning machine (KELM) for single motion classification, and in particular we propose a reliability weighted sum (RWS) decision fusion method to combine the fuzzy decisions of the motion frames. We demonstrate the performance of the proposed method by using walking gait data collected from 76 participants, and results show that KELM significantly outperforms support vector machine (SVM) and random forest in the single motion frame classification task, and demonstrate that the proposed RWS decision fusion rule can achieve better fusion accuracy compared with conventional fusion rules. Our results also show that, with 10 motion trackers that are implemented on lower body locations, the proposed method can achieve 100% validation accuracy with less than 50 gait motion frames.
基于运动捕捉数据的人体识别因其在身份验证和监控系统中的广泛应用而受到关注。光学运动捕捉系统 (OMCS) 可以动态捕捉人体上实施的光学跟踪器的高精度三维位置,但在现有工作中尚未研究其在步态识别应用中的潜力。另一方面,典型的 OMCS 一次只能支持一个参与者,这限制了它的能力和效率。在本文中,我们的目标是研究基于 OMCS 的步态识别性能,并在 OMCS 中实现步态识别,使其能够同时支持多个参与者。我们开发了一种基于决策融合的步态识别方法,它包括以下四个步骤:特征提取、不可靠特征校准、单运动帧分类和多运动帧决策融合。我们使用核极端学习机 (KELM) 进行单运动分类,特别是我们提出了一种可靠性加权和 (RWS) 决策融合方法来组合运动帧的模糊决策。我们使用从 76 名参与者收集的步行步态数据来演示所提出方法的性能,结果表明 KELM 在单运动帧分类任务中明显优于支持向量机 (SVM) 和随机森林,并且表明所提出的 RWS 决策融合规则与传统融合规则相比可以实现更好的融合准确性。我们的结果还表明,使用安装在下半身的 10 个运动跟踪器,该方法可以在少于 50 个步态运动帧的情况下实现 100%的验证准确性。