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Agile gesture recognition for capacitive sensing devices: adapting on-the-job

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conference contribution
posted on 2023-11-13, 14:16 authored by Y Liu, L Guo, VA Makarov, Y Huang, A Gorban, E Mirkes, IY Tyukin
Automated hand gesture recognition has been a focus of the AI community for decades. Traditionally, work in this domain revolved largely around scenarios assuming the availability of the flow of images of the operator's/user's hands. This has partly been due to the prevalence of camera-based devices and the wide availability of image data. However, there is growing demand for gesture recognition technology that can be implemented on low-power devices using limited sensor data instead of high-dimensional inputs like hand images. In this work, we demonstrate a hand gesture recognition system and method that uses signals from capacitive sensors embedded into the etee hand controller. The controller generates real-time signals from each of the wearer's five fingers. We use a machine learning technique to analyse the time-series signals and identify three features that can represent 5 fingers within 500 ms. The analysis is composed of a two-stage training strategy, including dimension reduction through principal component analysis and classification with K-nearest neighbour. Remarkably, we found that this combination showed a level of performance which was comparable to more advanced methods such as supervised variational autoencoder. The base system can also be equipped with the capability to learn from occasional errors by providing it with an additional adaptive error correction mechanism. The results showed that the error corrector improve the classification performance in the base system without compromising its performance. The system requires no more than 1 ms of computing time per input sample, and is smaller than deep neural networks, demonstrating the feasibility of agile gesture recognition systems based on this technology.

Funding

Innovate UK KTP grant (12250)

Turing AI Fellowship: Adaptive, Robust, and Resilient AI Systems for the FuturE

Engineering and Physical Sciences Research Council

Find out more...

Turing AI Fellowship: Adaptive, Robust, and Resilient AI Systems for the FuturE

Engineering and Physical Sciences Research Council

Find out more...

History

Author affiliation

School of Computing and Mathematical Sciences, University of Leicester

Source

2023 International Joint Conference on Neural Networks (IJCNN)

Version

  • AM (Accepted Manuscript)

Published in

Proceedings of the International Joint Conference on Neural Networks

Volume

2023-June

Publisher

IEEE

issn

2161-4393

isbn

9781665488679

Copyright date

2023

Available date

2023-11-13

Temporal coverage: start date

2023-06-18

Temporal coverage: end date

2023-06-23

Language

en

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