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Using Probabilistic Movement Primitives in Analyzing Human Motion Differences Under Transcranial Current Stimulation

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Journal Front Robot AI
Date 2021 Oct 1
PMID 34595209
Citations 1
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Abstract

In medical tasks such as human motion analysis, computer-aided auxiliary systems have become the preferred choice for human experts for their high efficiency. However, conventional approaches are typically based on user-defined features such as movement onset times, peak velocities, motion vectors, or frequency domain analyses. Such approaches entail careful data post-processing or specific domain knowledge to achieve a meaningful feature extraction. Besides, they are prone to noise and the manual-defined features could hardly be re-used for other analyses. In this paper, we proposed (ProMPs), a widely-used approach in robot skill learning, to model human motions. The benefit of ProMPs is that the features are directly learned from the data and ProMPs can capture important features describing the trajectory shape, which can easily be extended to other tasks. Distinct from previous research, where classification tasks are mostly investigated, we applied ProMPs together with a variant of Kullback-Leibler (KL) divergence to quantify the effect of different methods on human motions. We presented an initial result with 10 participants. The results validate ProMPs as a robust and effective feature extractor for human motions.

Citing Articles

Cerebellar transcranial current stimulation - An intraindividual comparison of different techniques.

Herzog R, Berger T, Pauly M, Xue H, Rueckert E, Munchau A Front Neurosci. 2022; 16:987472.

PMID: 36188449 PMC: 9521312. DOI: 10.3389/fnins.2022.987472.

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