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Automatic Detection of Deviations in Human Movements Using HMM: Discrete vs Continuous

机译:使用HMM自动检测人类运动中的偏差:离散Vs连续

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Automatic detection of correct performance of movements in humans is the core of coaching and rehabilitation applications. Human movement can be studied in terms of sequential data by using different sensor technologies. This representation makes it possible to use models that use sequential data to determine if executions of a certain activity are close enough to the specification or if they must be considered to be erroneous. One of the most widely used approaches for characterization of sequential data are Hidden Markov Models (HMM). They have the advantage of being able to model processes based on data from noisy sources. In this work we explore the use of both discrete and continuous HMMs to label movement sequences as either according to a specification or deviated from it. The results show that the majority of sequences are correctly labeled by the technique, with an advantage for continuous HMM.
机译:自动检测人类运动的正确性能是教练和康复应用的核心。可以通过使用不同的传感器技术在顺序数据方面进行人体运动。此表示可以使用使用顺序数据来确定某个活动的执行是否足够接近规范,或者如果必须被视为错误。使用顺序数据表征最广泛使用的方法之一是隐藏的Markov模型(HMM)。它们具有能够基于来自嘈杂来源的数据进行建模过程的优势。在这项工作中,我们探讨了使用离散和连续的HMMS来标记为根据规范或偏离它的移动序列。结果表明,大部分序列由该技术正确标记,具有连续肝炎的优势。

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