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Quantitative Assessment of Shoulder Rehabilitation Using Digital Motion Acquisition and Convolutional Neural Network

机译:应用数字运动采集与卷积神经网络的肩部康复定量评估

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摘要

Motion capture (Mocap) is applied to motor rehabilitation of patients recovering from a trauma, a surgery, or other impairing conditions. Some rehabilitation exercises are easily tracked with low-cost technologies and a simple Mocap setup, while some others are extremely hard to track because they imply small movements and require high accuracy. In these last cases, the obvious solution is to use high performing motion tracking systems, but these devices are generally too expensive in the rehabilitation context. The aim of this paper is to provide a Mocap solution suitable for any kind of exercise but still based on low-cost sensors. This result can be reached embedding some artificial intelligence (AI), in particular a convolutional neural network (CNN), to gather a better outcome from the optical acquisition. The paper provides a methodology including the way to perform patient's tracking and to elaborate the data from infra-red sensors and from the red, green, blue (RGB) cameras in order to create a user-friendly application for physiotherapists. The approach has been tested with a known complex case concerning the rehabilitation of shoulders. The proposed solution succeeded in detecting small movements and incorrect patient behavior, as for instance, a compensatory elevation of the scapula during the lateral abduction of the arm. The approach evaluated by medical personnel provided good results and encouraged its application in different kinds of rehabilitation practices as well as in different fields where low-cost Mocap could be introduced.
机译:运动捕获(Mocap)应用于从创伤,手术或其他损害条件恢复的患者的电机恢复。使用低成本技术和简单的Mocap设置很容易跟踪一些康复练习,而其他一些人非常难以跟踪,因为它们意味着小的运动,需要高精度。在最后一个例子中,明显的解决方案是使用高性能的运动跟踪系统,但是在康复上下文中,这些设备通常太昂贵。本文的目的是提供一种适用于任何种类运动的Mocap解决方案,但仍然基于低成本传感器。该结果可以达到嵌入一些人工智能(AI),特别是卷积神经网络(CNN),以从光学获取中收集更好的结果。本文提供了一种方法,包括执行患者跟踪的方法,并详细阐述来自红外传感器的数据,并从红色,绿色,蓝色(RGB)摄像机,以便为物理治疗师创建用户友好的应用程序。该方法已经通过了有关肩部康复的已知复杂案例进行了测试。所提出的解决方案成功地检测小运动和不正确的患者行为,例如,肩胛骨侧伸展期间肩胛骨的补偿仰卧。医务人员评估的方法提供了良好的效果,并鼓励其在不同类型的康复实践中的应用以及可以引入低成本Mocap的不同领域。

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