Stroke Rehabilitation based on Intelligence Interaction System

Pornphom Piraintorn, V. Sa-Ing
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引用次数: 3

Abstract

Stroke rehabilitation is an important requirement of patient treatment after recovering from stroke disease. However, a physical therapist can only observe once a patient at a time. Moreover, it takes a lot of time to suggest and evaluate the correction. From this problem, this research will develop the new rehabilitation guidance systems that assist the physical therapist and medical doctor. The intelligence interaction system is proposed for detection and monitoring the rehabilitation of the stroke patient who stays on the bed. The proposed system detects a stroke patient by using a 3D camera, which is the Intel Realsense D415, to place at the end of the patient bed for extracting the patient from the bed by measuring the distance between the patient and bed. From the segmentation result of the patient, the proposed system evaluates the rehab posture of the patient by detection from the simulated skeleton to calculate from the changing degree of the shoulder joint, elbow joint, and wrist joint. In addition, the proposed system uses the capabilities of artificial intelligence to check the accuracy of physiotherapy patients and show to the patients how to perform physical therapy correctly. From the experiment results, the proposed system represents the effective monitoring and evaluation of the stroke rehabilitation that the program can accurately count the arm flexion gesture therapy. Therefore, the intelligence interaction system can usefully help the physical therapist to monitor and evaluate the rehabilitation of stroke on the bed.
基于智能交互系统的脑卒中康复
脑卒中康复是脑卒中患者康复后治疗的重要要求。然而,物理治疗师一次只能观察一个病人。此外,建议和评估纠正需要花费大量时间。针对这一问题,本研究将开发辅助物理治疗师和医生的新型康复指导系统。针对脑卒中卧床病人的康复监测,提出了智能交互系统。该系统通过将英特尔Realsense D415 3D摄像头放置在病床末端,通过测量患者与病床之间的距离,将患者从病床上提取出来,从而检测中风患者。根据患者的分割结果,本系统通过对模拟骨骼的检测来评估患者的康复姿态,并根据肩关节、肘关节、腕关节的变化程度进行计算。此外,提出的系统利用人工智能的能力来检查物理治疗患者的准确性,并向患者展示如何正确地进行物理治疗。从实验结果来看,该系统对脑卒中康复的有效监测和评估表明,该程序可以准确地统计手臂屈曲手势治疗。因此,智能交互系统可以有效地帮助物理治疗师在床上监测和评估中风的康复。
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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