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Extracting interpretable muscle activation patterns with time series knowledge mining

机译:通过时间序列知识挖掘来提取可解释的肌肉激活模式

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摘要

The understanding of complex muscle coordination is an important goal in human movement science. There are numerous applications in medicine, sports, and robotics. The coordination process can be studied by observing complex, often cyclic movements, which are dynamically repeated in an almost identical manner. The muscle activation is measured using kinesiological EMG. Mining the EMG data to identify patterns, which explain the interplay and coordination of muscles is a very difficult Knowledge Discovery task. We present the Time Series Knowledge Mining framework to discover knowledge in multivariate time series and show how it can be used to extract such temporal patterns.
机译:了解复杂的肌肉协调性是人体运动科学的重要目标。在医学,体育和机器人技术领域有许多应用。可以通过观察复杂的,通常为周期的运动来研究协调过程,这些运动以几乎相同的方式动态重复。使用运动学肌电图测量肌肉激活。挖掘EMG数据以识别模式(解释肌肉的相互作用和协调)是一项非常困难的知识发现任务。我们提出了时间序列知识挖掘框架,以发现多元时间序列中的知识,并展示了如何将其用于提取此类时间模式。

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