High Precision Gesture Sensing Via Quantitative Characterization Of The Doppler Effect

2016 23RD INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR)(2016)

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摘要
This paper presents a high precision gesture recognition system that leverages the Doppler effect of ultrasound to sense in-air hand gestures. The system can precisely identify a wider variety of gestures than other systems without any modification to consumer laptops. The system recognizes quantitatively detailed and complex movements from the signals reflected by a moving body. A Hidden Markov Model is used to construct a library of independent, discrete gestures. The gestures can be mapped to diverse application actions. Our method can distinguish among similar gestures with slight difference by extracting fewer, more effective features. Our proposed system reduces false positives caused by unintended motions and is versatile and adaptable to multiple device. We implemented a proof-of-concept prototype on a laptop and extensively evaluated the system. Our results show that the system recognizes six gestures with an average accuracy of 98.6% and 18 gestures including similar ones with 95% accuracy. The flexibility and robustness on multiple devices highlights its ability to enable future ubiquitous
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关键词
high precision gesture sensing,Doppler effect,high precision gesture recognition system,in-air hand gestures,hidden Markov model,feature extraction
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