We present a framework for gesture customization requiring minimal examples from users, all without degrading the performance of existing gesture sets. To achieve this, we first deployed a large-scale study (N=500+) to collect data and train an accelerometer-gyroscope recognition model with a cross-user accuracy of 95.7% and a false-positive rate of 0.6 per hour when tested on everyday non-gesture data. Next, we design a few-shot learning framework which derives a lightweight model from our pre-trained model, enabling knowledge transfer without performance degradation. We validate our approach through a user study (N=20) examining on-device customization from 12 new gestures, resulting in an average accuracy of 55.3%, 83.1%, and 87.2% on using one, three, or five shots when adding a new gesture, while maintaining the same recognition accuracy and false-positive rate from the pre-existing gesture set. We further evaluate the usability of our real-time implementation with a user experience study (N=20). Our results highlight the effectiveness, learnability, and usability of our customization framework. Our approach paves the way for a future where users are no longer bound to pre-existing gestures, freeing them to creatively introduce new gestures tailored to their preferences and abilities.
@article{arxiv.2203.15239,
title = {Enabling hand gesture customization on wrist-worn devices},
author = {Xuhai Xu and Jun Gong and Carolina Brum and Lilian Liang and Bongsoo Suh and Kumar Gupta and Yash Agarwal and Laurence Lindsey and Runchang Kang and Behrooz Shahsavari and Tu Nguyen and Heriberto Nieto and Scott E. Hudson and Charlie Maalouf and Seyed Mousavi and Gierad Laput},
journal= {arXiv preprint arXiv:2203.15239},
year = {2022}
}
Comments
Proceedings of the 2022 CHI Conference on Human Factors in Computing Systems