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Human Gait Analysis Using Machine Learning: A Review

机译:人体步态分析采用机器学习:综述

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The gait analysis is interpreted to include an overwhelming number of interrelated parameters, which, due to the high volume of data and their relationships and is difficult to implement. The integration of machine learning with biomechanics is a promising approach to simplify the evaluation. The aim of this paper is to educate readers about the key directions to implement the gait analysis with machine learning techniques. The detailed survey is based on review and implementation articles performed by numerous research scholars to detect neurological effects in gait, gait asymmetry, gait disorders, gait events, and gait activities by using supervised machine learning algorithms. This study paper also reveals the effectiveness of ML approaches for condition identification, forecasting recovery time and monitoring for clinical diagnostic instruments.
机译:步态分析被解释为包括一个压倒性的相互关联参数,这是由于大量的数据和它们的关系并且难以实现。 通过生物力学的机器学习集成是一种有希望的方法来简化评估。 本文的目的是教育读者关于使用机器学习技术实现步态分析的关键方向。 详细的调查基于审查和实施文章,通过使用监督机器学习算法检测步态,步态不对称,步态,步态障碍,步态事件和步态活动的审查和实施物品。 本研究论文还揭示了ML方法鉴定,预测恢复时间和临床诊断仪器监测方法的有效性。

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