Flex Force Smart Glove Prototype for Physical Therapy Rehabilitation

Lloyd E. Emokpae, Roland N. Emokpae, Brady. Emokpae
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引用次数: 2

Abstract

A nonintrusive and noninvasive Flex Force Smart Glove (FFSG) design is presented that allows for acquisition and processing of sensorimotor information obtained from the human hand. The novel FFSG design is powered by the Intel FPGA system on chip and incorporates all the sensors needed to measure the force and rotation of the human wrist and fingers. Quaternion-based Kalman filters are used to fuse the raw sensor data from five finger joints and one wrist joint to provide detailed orientation information. In addition, feed forward neural network filters are used to classify possible hand exercises that can be further used facilitate rehabilitation through exercise sessions. The novel design will allow for a unified way to quantify the effectiveness of both conventional and robotic-assisted rehabilitation.
用于物理治疗康复的Flex Force智能手套原型
提出了一种非侵入性和非侵入性的柔性力智能手套(FFSG)设计,允许从人手获得的感觉运动信息的获取和处理。新颖的FFSG设计由英特尔FPGA系统驱动,集成了测量人类手腕和手指的力和旋转所需的所有传感器。采用基于四元数的卡尔曼滤波,融合来自五个手指关节和一个手腕关节的原始传感器数据,提供详细的方向信息。此外,前馈神经网络过滤器用于分类可能的手部运动,这些运动可以进一步用于通过锻炼促进康复。这种新颖的设计将允许一种统一的方法来量化传统和机器人辅助康复的有效性。
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