低成本立体视觉在康复活动中的人体手势识别

S. Ismail, Mohd Azizi Abdul Rahman, S. Mazlan, H. Zamzuri
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引用次数: 4

摘要

在康复过程中,患者往往会做一些异常的手势来表明他们的病情。由于患者可能发生危险,特别是在没有治疗师监督的情况下,因此应该建立监测系统。在本文中,我们进行了一项初步的工作,提供一个在线监测系统,以取代治疗师的角色,在物理治疗活动中使用步进器自动监测患者。然而,本文的主要目的是提出通过对特征进行线性判别分析(LDA)来提高人体手势识别率的方法,然后提出支持向量机(SVM)作为分类器。为了准确识别患者在体育活动中摔倒等手势,提出了从头部和躯干位置信息计算角度特征作为输入数据。低成本的RGB和深度相机将用于跟踪和捕捉患者的骨骼关节位置。在本研究中提出了关节角的LDA作为特征。提取的特征将使用支持向量机进行分析和分类,以识别患者在康复过程中所做的手势类型。当任何异常的手势被识别时,系统将提供信息作为警报,供治疗师进一步监督。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human gesture recognition using a low cost stereo vision in rehab activities
During rehabilitation, patients tend to do several abnormal gestures to indicate their conditions. Since danger might happen to patients, especially without the supervision of therapist, a monitoring system should be developed. In this paper, a preliminary work is conducted to provide an online monitoring system to replace the therapist role to automatically monitor patient during the physical therapy activities by using a stepper. However, the main objective of this paper is to propose methods that can improve recognition rate of human gesture by implying Linear Discriminant Analysis (LDA) on features and then propose Support Vector Machine (SVM) as classifier. In order to accurately identify gesture of patients such as falling down during physical activities, angle features calculated from the information of head and torso positions is proposed as input data. A low cost RGB and depth camera will be used to track and capture the skeleton joint position of the patient. LDA of joint angles is proposed as feature in this research. The feature extracted will be analysed and classified using SVM to recognize the type of gestures performed by the patient during rehabilitation. As any abnormal gesture was recognized, the system will provide information to be used as an alarm for further supervision by the therapist.
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