Information (Jun 2019)

Multi-Sensor Activity Monitoring: Combination of Models with Class-Specific Voting

  • Lingfei Mo,
  • Lujie Zeng,
  • Shaopeng Liu,
  • Robert X. Gao

DOI
https://doi.org/10.3390/info10060197
Journal volume & issue
Vol. 10, no. 6
p. 197

Abstract

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This paper presents a multi-sensor model combination system with class-specific voting for physical activity monitoring, which combines multiple classifiers obtained by splicing sensor data from different nodes into new data frames to improve the diversity of model inputs. Data obtained from a wearable multi-sensor wireless integrated measurement system (WIMS) consisting of two accelerometers and one ventilation sensor have been analysed to identify 10 different activity types of varying intensities performed by 110 voluntary participants. It is noted that each classifier shows better performance on some specific activity classes. Through class-specific weighted majority voting, the recognition accuracy of 10 PA types has been improved from 86% to 92% compared with the non-combination approach. Furthermore, the combination method has shown to be effective in reducing the subject-to-subject variability (standard deviation of recognition accuracies across subjects) in activity recognition and has better performance in monitoring physical activities of varying intensities than traditional homogeneous classifiers.

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