SPHCDec 1, 2017

Micro Hand Gesture Recognition System Using Ultrasonic Active Sensing

arXiv:1712.00216v37 citations
Originality Incremental advance
AI Analysis

This addresses gesture recognition for HCI applications, but it is incremental as it builds on existing sensing and machine learning methods.

The paper tackles micro hand gesture recognition for human-computer interaction using ultrasonic active sensing, achieving up to 96.32% accuracy with an end-to-end neural network and demonstrating a real-time prototype.

In this paper, we propose a micro hand gesture recognition system and methods using ultrasonic active sensing. This system uses micro dynamic hand gestures for recognition to achieve human-computer interaction (HCI). The implemented system, called hand-ultrasonic gesture (HUG), consists of ultrasonic active sensing, pulsed radar signal processing, and time-sequence pattern recognition by machine learning. We adopt lower frequency (300 kHz) ultrasonic active sensing to obtain high resolution range-Doppler image features. Using high quality sequential range-Doppler features, we propose a state-transition-based hidden Markov model for gesture recognition. This method achieves a recognition accuracy of nearly 90\% by using symbolized range-Doppler features and significantly reduces the computational complexity and power consumption. Furthermore, to achieve higher classification accuracy, we utilize an end-to-end neural network model and obtain a recognition accuracy of 96.32\%. In addition to offline analysis, a real-time prototype is released to verify our method's potential for application in the real world.

Foundations

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