An Adaptive Hidden Markov Model for Activity Recognition Based on a Wearable Multi-Sensor Device

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作者
Zhen Li
Zhiqiang Wei
Yaofeng Yue
Hao Wang
Wenyan Jia
Lora E. Burke
Thomas Baranowski
Mingui Sun
机构
[1] Ocean University of China,Department of Computer Science
[2] University of Pittsburgh,Department of Neurosurgery
[3] University of Pittsburgh,Department of Electrical & Computer Engineering
[4] University of Pittsburgh,Department of Health and Community Systems
[5] Baylor College of Medicine,Department of Pediatrics
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Hidden Markov model; Activity recognition; Wearable device; Big data; Machine learning; Personal health;
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摘要
Human activity recognition is important in the study of personal health, wellness and lifestyle. In order to acquire human activity information from the personal space, many wearable multi-sensor devices have been developed. In this paper, a novel technique for automatic activity recognition based on multi-sensor data is presented. In order to utilize these data efficiently and overcome the big data problem, an offline adaptive-Hidden Markov Model (HMM) is proposed. A sensor selection scheme is implemented based on an improved Viterbi algorithm. A new method is proposed that incorporates personal experience into the HMM model as a priori information. Experiments are conducted using a personal wearable computer eButton consisting of multiple sensors. Our comparative study with the standard HMM and other alternative methods in processing the eButton data have shown that our method is more robust and efficient, providing a useful tool to evaluate human activity and lifestyle.
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