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Evaluation of Self-Rehabilitation Movements by Hidden Markov Model

机译:用隐马尔可夫模型评价自我康复运动

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This study aims to propose a statistical model to automatically assess the correctness of rehabilitation movements performed by patients. Ten Hidden Markov Models are developed and trained, in order to discriminate in real time the main faults in the execution of therapeutic exercises for reeducation after hip replacement surgery. An experiment on real patients shows that the algorithm is as accurate as the physiotherapists to discriminate and identify the error in the movement. The results are discussed in terms of the required setup for a successful implementation of this method in a tele-rehabilitation platform.
机译:本研究旨在提出一种统计模型,以自动评估患者进行的康复运动的正确性。开发并训练了十种隐马尔可夫模型,以实时区分髋关节置换手术后进行再治疗的治疗性练习中的主要缺陷。在真实患者身上进行的实验表明,该算法与理疗师一样,能够准确识别和识别运动中的错误。根据在远程康复平台中成功实施此方法所需的设置讨论了结果。

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