首页> 外文期刊>International journal of interdisciplinary telecommunications and networking >Lower-Limb Rehabilitation at Home: A Survey on Exercise Assessment and Initial Study on Exercise State Identification Toward Biofeedback
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Lower-Limb Rehabilitation at Home: A Survey on Exercise Assessment and Initial Study on Exercise State Identification Toward Biofeedback

机译:家庭较低的肢体康复:对生物背面运动状态识别的运动评估及初步研究调查

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摘要

Ageing causes loss of muscle strength, especially on the lower limbs, resulting in higher risk to injuries during functional activities. The path to recovery is through physiotherapy and adopt customized rehabilitation exercise to assist the patients. Hence, lowering the risk of incorrect exercise at home involves the use of biofeedback for physical rehabilitation patients and quantitative reports for clinical physiotherapy. This research topic has garnered much attention in recent years owing to the fast ageing population and the limited number of clinical experts. In this paper, the authors survey the existing works in exercise assessment and state identification. The evaluation results in the accuracy of 95.83% average classifying exercise motion state using the proposed raw signal. It confirmed that raw signals have more impact than using sensor-fused Euler and joint angles in the state identification prediction model.
机译:老化导致肌肉力量的丧失,特别是在下肢上,导致功能活动中受伤的风险较高。 恢复的途径是通过物理治疗,采用定制的康复运动来协助患者。 因此,降低家庭运动不正确的风险涉及使用生物反馈以进行身体康复患者和临床理疗的定量报告。 这项研究课题近年来由于人口速度快,临床专家数量有限,近年来追求了很多关注。 本文在行使评估和国家鉴定方面调查了现有的作品。 评价导致使用所提出的原始信号的平均分类运动状态的精度为95.83%。 它证实原始信号与使用状态识别预测模型中的传感器融合的欧拉和关节角度具有更多的冲击。

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