Research Article Open Access

Biometric Gait Recognition Based on Machine Learning Algorithms

Mohamed Sayed1
  • 1 Arab Open University, Kuwait

Abstract

It is crucial to find methods that analyze large amount of data captured by cameras and/or various sensors installed all around us. Machine learning becomes a prevailing tool in analyzing such data that signifies behavioral characteristics of human beings. Gait as an identifier for use in individual recognition systems has respective and almost certainly unique key features for each person including centroid, cycle length and step size. Gait is sometimes preeminent suited to recognition or surveillance scenarios. It might be used in the identification of females who are wearing veils in some countries without critical social issues. The objective of this project is to predict accurately one-dimensional coordinates of normalized n-component vectors representing two-dimensional silhouettes in order to identify individuals at a distance without any interaction and obtrusion. Varied algorithms are further incorporated into walk pattern analysis to adoptively improve gait recognitions and classification. The results are reported reasonable identification performance as compared to several machine learning methods.

Journal of Computer Science
Volume 14 No. 7, 2018, 1064-1073

DOI: https://doi.org/10.3844/jcssp.2018.1064.1073

Submitted On: 28 April 2018 Published On: 6 August 2018

How to Cite: Sayed, M. (2018). Biometric Gait Recognition Based on Machine Learning Algorithms. Journal of Computer Science, 14(7), 1064-1073. https://doi.org/10.3844/jcssp.2018.1064.1073

  • 4,661 Views
  • 2,642 Downloads
  • 13 Citations

Download

Keywords

  • Biometrics
  • Gait Recognition
  • Feature Vectors
  • Machine Learning and Classification Methods