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School violence detection based on multi-sensor fusion and improved relief-F algorithms

Authors :
Ye, L. (Liang)
Shi, J. (Jifu)
Ferdinando, H. (Hany)
Seppänen, T. (Tapio)
Alasaarela, E. (Esko)
Publication Year :
2019
Publisher :
Springer Nature, 2019.

Abstract

School bullying is a common social problem around the world, and school violence is considered to be the most harmful form of school bullying. This paper proposes a school violence detecting method based on multi-sensor fusion and improved Relief-F algorithms. Data are gathered with two movement sensors by role playing of school violence and daily-life activities. Altogether 9 kinds of activities are recorded. Time domain features and frequency domain features are extracted and filtered by an improved Relief-F algorithm. Then the authors build a two-level classifier. The first level is a Decision Tree classifier which separates the activity of jump from the others, and the second level is a Radial Basis Function neural network which classifies the remainder 8 kinds of activities. Finally a decision layer fusion algorithm combines the recognition results of the two sensors together. The average recognition accuracy of school violence reaches 84.4%, and that of daily-life reaches 97.3%.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.od......2423..8f85ca21bcc397a6161746385343812f