A recognition method for one-stroke finger gestures using a MEMS 3d accelerometer

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Abstract

Automatic recognition of finger gestures can be used for promotion of life quality. For example, a senior citizen can control the home appliance, call for help in emergency, or even communicate with others through simple finger gestures. Here, we focus on one-stroke finger gesture, which are intuitive to be remembered and performed. In this paper, we proposed and evaluated an accelerometer-based method for detecting the predefined one-stroke finger gestures from the data collected using a MEMS 3D accelerometer worn on the index finger. As alternative to the optoelectronic, sonic and ultrasonic approaches, the accelerometerbased method is featured as self-contained, cost-effective, and can be used in noisy or private space. A compact wireless sensing mote integrated with the accelerometer, called MagicRing, is developed to be worn on the finger for real data collection. A general definition on one-stroke gesture is given out, and 12 kinds of one-stroke finger gestures are selected from human daily activities. A set of features is extracted among the candidate feature set including both traditional features like standard deviation, energy, entropy, and frequency of acceleration and a new type of feature called relative feature. Both subject-independent and subject-dependent experiment methods were evaluated on three kinds of representative classifiers. In the subject-independent experiment among 20 subjects, the decision tree classifier shows the best performance recognizing the finger gestures with an average accuracy rate for 86.92 %. In the subject-dependent experiment the nearest neighbor classifier got the highest accuracy rate for 97.55 %. © 2011 The Institute of Electronics, Information and Communication Engineers.

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APA

Jing, L., Zhou, Y., Cheng, Z., & Wang, J. (2011). A recognition method for one-stroke finger gestures using a MEMS 3d accelerometer. IEICE Transactions on Information and Systems, E94-D(5), 1062–1072. https://doi.org/10.1587/transinf.E94.D.1062

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