Affiliation:
1. Department of Computer Science and Engineering, National Institute of Technology, Patna, India
Abstract
Background:
Gait recognition focuses on the identification of persons from their walking
activity. This type of system plays an important role in visual surveillance applications. The
walking pattern of every person is unique and difficult to replicate by others.
Objective:
The present article focuses on to develop a person identification system based on gait
recognition.
Methods:
In this article, a novel gait recognition approach is proposed to show how human body
Centre-of-mass-based walking characteristics can be used to recognize unauthorized and suspicious
persons when they enter in a surveillance area. Walking pattern varies from person to person mainly
due to the differences in the footsteps and body movement. Initially, the background is modelled
from the input video captured through static cameras deployed for security purpose. Foreground
moving object in the individual frames is then segmented using the background subtraction algorithm.
Centre-of-mass based discriminative features of various walking patterns are then studied using
Support Vector Machine(SVM) classifier to identify each unique walking pattern.
Results:
The proposed system has been evaluated using a self-generated dataset containing a side
view of various walking video clips. The experimental results demonstrate that the proposed system
achieves an encouraging person identification rate.
Conclusion:
This work can be further extended to provide a general approach in developing an automatic
person identification system in an unconstrained environment.
Publisher
Bentham Science Publishers Ltd.
Cited by
1 articles.
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