Parameter analysis and selection for human gait characterization using a low cost vision system

J. Ferreira, Tao Liu, Portugal Coimbra, Paulo Coimbra
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引用次数: 0

Abstract

The main objective of this research project is to develop a low cost computerized system to automatically diagnose gait disorders and characterize their severity. The system uses 2 video cameras to provide a 3D position acquisition system connected to a personal computer. The patient gait and posture are analyzed from the data acquired by a vision-based gait acquisition system. The whole system will be an important novel tool in medical rehabilitation and diagnosis, resulting on a more effective functional rehabilitation of a patient's gait, assessing their clinical evolution and solving the limitations of the current subjective gait diagnosis tools. The system allows the calculation of 17 human gait joint trajectories. This system will provide a much more objective understanding of the patient's clinical evolution, and thus enables a more effective functional rehabilitation of a patient's gait. In this paper it is presented the selection of the relevant diagnosis parameters of the gait patterns, which is one of the steps to get to the main objective, the automatic diagnosis of human gaits.
基于低成本视觉系统的人体步态特征参数分析与选择
本研究项目的主要目标是开发一种低成本的计算机系统来自动诊断步态障碍并表征其严重程度。该系统使用2个摄像机提供连接到个人电脑的3D位置采集系统。利用基于视觉的步态采集系统采集到的数据对患者的步态和姿态进行分析。整个系统将成为医学康复和诊断的重要新工具,对患者的步态进行更有效的功能康复,评估其临床演变,解决当前主观步态诊断工具的局限性。该系统允许计算17个人类步态关节轨迹。该系统将为患者的临床发展提供更客观的理解,从而使患者的步态功能康复更加有效。本文介绍了步态模式相关诊断参数的选取,这是实现人体步态自动诊断这一主要目标的步骤之一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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