Improving online gesture recognition with template matching methods in accelerometer data

ISDA(2012)

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摘要
Template matching methods using Dynamic Time Warping (DTW) have been used recently for online gesture recognition from body-worn motion sensors. However, DTW has been shown sensitive under the strong presence of noise in time series. In sensor readings, labeling temporal boundaries of daily gestures precisely is rarely achievable as they are often intertwined. Moreover, the variation in daily gesture execution always exists. Therefore, here we propose two template matching methods utilizing the Longest Common Subsequence (LCSS) to improve robustness against such noise for online gesture recognition. Segmented LCSS utilizes a sliding window to define the unknown boundaries of gestures in the continuous coming sensor readings and detects efficiently a possibly shorter gesture within it. WarpingLCSS is our novel variant of LCSS to determine occurrences of gestures without segmenting data and performs one order of magnitude faster than the Segmented LCSS. The WarpingLCSS requires low-resource settings to process new arriving samples, thus it is suitable for real-time gesture recognition implemented directly on the small wearable devices. We compare our methods with the existing template matching methods based on Dynamic Time Warping (DTW) on two real-world gesture datasets from arm-worn accelerometer data. The results demonstrate that the LCSS approaches outperform the existing template matching approaches (about 12% in accuracy) in the dataset that suffers from boundary noise and execution variation.
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关键词
gesture occurrence determination,wearable computers,human computer interaction,template matching methods,real-time gesture recognition,longest common subsequence,boundary noise,robustness improvement,execution variation,wearable devices,daily gesture execution,online gesture recognition improvement,sensor readings,warpinglcss,segmented lcss,dynamic time warping,dtw,accelerometers,gesture recognition,online activity recognition,lcss,template matching method,body-worn motion sensors,time series,real-time systems,arm-worn accelerometer data,real time systems
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