Fast and Expressive Gesture Recognition using a Combination-Homomorphic Electromyogram Encoder
Niklas Smedemark-Margulies, Yunus Bicer, Elifnur Sunger, Tales, Imbiriba, Eugene Tunik, Deniz Erdogmus, Mathew Yarossi, Robin Walters

TL;DR
This paper introduces a novel EMG gesture recognition method that uses a combination-homomorphic encoder to generate synthetic data for unseen gestures, enabling high accuracy with minimal calibration.
Contribution
It proposes a combination-homomorphic encoder that extrapolates unseen gestures from single gesture data, reducing calibration effort for new users.
Findings
Significant accuracy improvement over partial supervision
Synthetic data enhances gesture recognition performance
Approaches fully-supervised accuracy with less calibration data
Abstract
We study the task of gesture recognition from electromyography (EMG), with the goal of enabling expressive human-computer interaction at high accuracy, while minimizing the time required for new subjects to provide calibration data. To fulfill these goals, we define combination gestures consisting of a direction component and a modifier component. New subjects only demonstrate the single component gestures and we seek to extrapolate from these to all possible single or combination gestures. We extrapolate to unseen combination gestures by combining the feature vectors of real single gestures to produce synthetic training data. This strategy allows us to provide a large and flexible gesture vocabulary, while not requiring new subjects to demonstrate combinatorially many example gestures. We pre-train an encoder and a combination operator using self-supervision, so that we can produce…
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Taxonomy
TopicsMuscle activation and electromyography studies · Hand Gesture Recognition Systems · Gaze Tracking and Assistive Technology
