为肌电图控制算法校正标记的训练数据中的时间不准确性。

Aaron T Wang, Connor D Olsen, W Caden Hamrick, Jacob A George
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引用次数: 0

摘要

肌电图(EMG)控制依赖于将EMG与运动意图相关联的监督学习算法。训练数据集的质量对算法的运行时性能至关重要,但标记运动意图是不精确和不完美的。当参与者用自己的手模仿虚拟手的预定动作时,收集传统的EMG训练数据。这假设参与者与预定的动作完全同步,而由于反应时间和信号处理延迟,这是不可能的。先前的工作已经使用互相关来全局移位和重新对准运动学数据和EMG。在这里,我们量化了这种全局重新对齐对分类算法和回归算法的影响,无论是否有人参与。我们还介绍了一种新的逐试验重新对准方法,以在每次运动的基础上将EMG与运动学重新对准。我们发现EMG和运动学数据本质上是错位的,并且在整个数据收集过程中反应时间是不一致的。全局和逐个试验的重新比对都显著提高了分类和回归的离线性能。相对于全局调整,我们的逐试验重新调整进一步提高了离线分类性能。然而,在有人积极参与的情况下,无论是否重新调整,在线表现都没有什么不同。这项工作强调了标记的EMG数据的不准确性,并对EMG控制应用具有广泛的意义。
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Correcting Temporal Inaccuracies in Labeled Training Data for Electromyographic Control Algorithms.

Electromyographic (EMG) control relies on supervised-learning algorithms that correlate EMG to motor intent. The quality of the training dataset is critical to the runtime performance of the algorithm, but labeling motor intent is imprecise and imperfect. Traditional EMG training data is collected while participants mimic predetermined movements of a virtual hand with their own hand. This assumes participants are perfectly synchronized with the predetermined movements, which is unlikely due to reaction time and signal-processing delays. Prior work has used cross-correlation to globally shift and re-align kinematic data and EMG. Here, we quantify the impact of this global re-alignment on both classification algorithms and regression algorithms with and without a human in the loop. We also introduce a novel trial-by-trial re-alignment method to re-align EMG with kinematics on a per-movement basis. We show that EMG and kinematic data are inherently misaligned, and that reaction time is inconsistent throughout data collection. Both global and trial-by-trial re-alignment significantly improved offline performance for classification and regression. Our trial-by-trial re-alignment further improved offline classification performance relative to global realignment. However, online performance, with a human actively in the loop, was no different with or without re-alignment. This work highlights inaccuracies in labeled EMG data and has broad implications for EMG-control applications.

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