Complexity (Jan 2021)

GaitVision: Real-Time Extraction of Gait Parameters Using Residual Attention Network

  • Mohammad Farukh Hashmi,
  • B. Kiran Kumar Ashish,
  • Prabhu Chaitanya,
  • Avinash Keskar,
  • Sinan Q. Salih,
  • Neeraj Dhanraj Bokde

DOI
https://doi.org/10.1155/2021/1589716
Journal volume & issue
Vol. 2021

Abstract

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Gait walking patterns are one of the key research topics in natural biometrics. The temporal information of the unique gait sequence of a person is preserved and used as a powerful data for access. Often there is a dive into the flexibility of gait sequence due to unstructured and unnecessary sequences that tail off the necessary sequence constraints. The authors in this work present a novel perspective, which extracts useful gait parameters regarded as independent frames and patterns. These patterns and parameters mark as unique signature for each subject in access authentication. This information extracted learns to identify the patterns associated to form a unique gait signature for each person based on their style, foot pressure, angle of walking, angle of bending, acceleration of walk, and step-by-step distance. These parameters form a unique pattern to plot under unique identity for access authorization. This sanitized data of patterns is further passed to a residual deep convolution network that automatically extracts the hierarchical features of gait pattern signatures. The end layer comprises of a Softmax classifier to classify the final prediction of the subject identity. This state-of-the-art work creates a gait-based access authentication that can be used in highly secured premises. This work was specially designed for Defence Department premises authentication. The authors have achieved an accuracy of 90%±1.3% in real time. This paper mainly focuses on the assessment of the crucial features of gait patterns and analysis of gait patterns research.