具有视觉反馈的自适应闭环功能电刺激系统增强神经损伤患者的抓取能力

IF 3.8 Q2 ENGINEERING, BIOMEDICAL
Chengyu Lin;Kong Hoi Cheng;Wei Pan;Jinxin Sun;Guotao Gou;Junyun Fu;Yuquan Leng;Chenglong Fu
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引用次数: 0

摘要

抓握是一项重要的运动技能,对日常活动至关重要,但在神经损伤的个体中经常受到损害。功能性电刺激(FES)是一种很有前途的干预方法,利用电脉冲刺激肌肉,从而恢复受损的运动功能。然而,现有的闭环FES系统依赖于预先校准的角度或特定于单个物体的力,这限制了它们在具有不同物体属性的动态现实环境中的实用性。提出了一种新颖的具有视觉反馈的闭环FES (CLFES)系统,该系统可以根据实时交互状态动态调整刺激参数,而无需针对特定对象进行校准。该系统采用有限状态机来管理连续的抓放任务,并集成了一个视觉感知模块,用于滑动检测和意图识别。该系统在五种常见的家用物品上对两名残疾人进行了测试。实验结果显示了显著的改进,包括与没有系统执行的任务相比,成功率提高了42.6%,任务完成时间减少了45.9%。这些结果强调了该系统在改善神经损伤患者日常任务表现方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Closed-Loop Functional Electrical Stimulation System With Visual Feedback for Enhanced Grasping in Neurological Impairments
Grasping is a critical motor skill essential for daily activities, but it is often compromised in individuals with neural impairments. Functional Electrical Stimulation (FES) has emerged as a promising intervention, utilizing electrical pulses to stimulate muscles and thereby restore impaired motor functions. However, existing closed-loop FES systems depend on pre-calibrated angles or forces specific to individual objects, which limits their practicality in dynamic, real-world environments with varying object properties.This paper presents a novel closed-loop FES (CLFES) system with visual feedback, designed to dynamically adjust stimulation parameters based on real-time interaction states without requiring object-specific calibration. The system employs a finite state machine to manage sequential grasp-release tasks and integrates a visual perception module for slip detection and intent recognition. The system was tested with two individuals with disabilities on five common household objects. Experimental results demonstrate significant improvements, including a 42.6% increase in success rate and a 45.9% reduction in task completion time compared to tasks performed without the system. These results underscore the system’s potential to improve daily task performance for individuals with neural impairments.
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CiteScore
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