Elliott M T, Ma X, Brett P N
Clinical Biomedical Engineering Research Group, School of Engineering and Applied Science, Birmingham, UK.
Proc Inst Mech Eng H. 2009 Jul;223(5):567-75. doi: 10.1243/09544119JEIM523.
This paper describes an innovative sensing approach allowing capture, discrimination, and classification of transients automatically in gait. A walking platform is described, which offers an alternative design to that of standard force plates with advantages that include mechanical simplicity and less restriction on dimensions. The scope of the work is to investigate as an experiment the sensitivity of the distributive tactile sensing method with the potential to address flexibility on gait assessment, including patient targeting and the extension to a variety of ambulatory applications. Using infrared sensors to measure plate deflection, gait patterns are compared with stored templates using a pattern recognition algorithm. This information is input into a neural network to classify normal and affected walking events, with a classification accuracy of just under 90 per cent achieved. The system developed has potential applications in gait analysis and rehabilitation, whereby it can be used as a tool for early diagnosis of walking disorders or to determine changes between pre- and post-operative gait.
本文描述了一种创新的传感方法,可在步态中自动捕获、辨别和分类瞬态信号。文中介绍了一种步行平台,它为标准测力板提供了一种替代设计,具有机械结构简单和尺寸限制较少等优点。这项工作的范围是作为一项实验来研究分布式触觉传感方法的灵敏度,该方法有潜力解决步态评估中的灵活性问题,包括针对患者以及扩展到各种动态应用。利用红外传感器测量平板的挠度,使用模式识别算法将步态模式与存储的模板进行比较。这些信息被输入到神经网络中,以对正常和受影响的步行事件进行分类,分类准确率接近90%。所开发的系统在步态分析和康复方面具有潜在应用,可作为早期诊断步行障碍的工具,或用于确定术前和术后步态之间的变化。