Tackling Electrode Shift In Gesture Recognition with HD-EMG Electrode
Subsets
- URL: http://arxiv.org/abs/2401.02773v1
- Date: Fri, 5 Jan 2024 12:13:00 GMT
- Title: Tackling Electrode Shift In Gesture Recognition with HD-EMG Electrode
Subsets
- Authors: Joao Pereira, Dimitrios Chalatsis, Balint Hodossy and Dario Farina
- Abstract summary: We propose training on a collection of input channel subsets and augmenting our training distribution with data from different electrode locations.
Our method increases robustness against electrode shift and results in significantly higher intersession performance across subjects and classification algorithms.
- Score: 0.8192907805418583
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: sEMG pattern recognition algorithms have been explored extensively in
decoding movement intent, yet are known to be vulnerable to changing recording
conditions, exhibiting significant drops in performance across subjects, and
even across sessions. Multi-channel surface EMG, also referred to as
high-density sEMG (HD-sEMG) systems, have been used to improve performance with
the information collected through the use of additional electrodes. However, a
lack of robustness is ever present due to limited datasets and the difficulties
in addressing sources of variability, such as electrode placement. In this
study, we propose training on a collection of input channel subsets and
augmenting our training distribution with data from different electrode
locations, simultaneously targeting electrode shift and reducing input
dimensionality. Our method increases robustness against electrode shift and
results in significantly higher intersession performance across subjects and
classification algorithms.
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