HCAIMar 29, 2022

Enabling hand gesture customization on wrist-worn devices

arXiv:2203.15239v294 citationsh-index: 72
Originality Incremental advance
AI Analysis

This work addresses the need for personalized gesture interaction in wearable technology, offering a practical solution for user customization.

The paper tackles the problem of enabling users to customize hand gestures on wrist-worn devices with minimal training examples, achieving an average accuracy of up to 87.2% with five shots while maintaining existing gesture performance.

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.

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