Abstract

This paper describes the acquisition setup and development of a new gait database, MMUGait. This database consists of 82 subjects walking under normal condition and 19 subjects walking with 11 covariate factors, which were captured under two views. This paper also proposes a multiview model-based gait recognition system with joint detection approach that performs well under different walking trajectories and covariate factors, which include self-occluded or external occluded silhouettes. In the proposed system, the process begins by enhancing the human silhouette to remove the artifacts. Next, the width and height of the body are obtained. Subsequently, the joint angular trajectories are determined once the body joints are automatically detected. Lastly, crotch height and step-size of the walking subject are determined. The extracted features are smoothened by Gaussian filter to eliminate the effect of outliers. The extracted features are normalized with linear scaling, which is followed by feature selection prior to the classification process. The classification experiments carried out on MMUGait database were benchmarked against the SOTON Small DB from University of Southampton. Results showed correct classification rate above 90% for all the databases. The proposed approach is found to outperform other approaches on SOTON Small DB in most cases.

Highlights

  • Biometrics is a way to identify individuals through their physical and behavioral characteristics such as fingerprint, gait, face, iris, and spoken speech

  • For group covariate factor analysis, the walking sequences were categorized into five groups: Group 1 (G1)—different speeds; Group 2 (G2)—variety of shoes; Group 3 (G3)— various objects carrying; Group 4 (G4)—various types of apparel; Group 5 (G5)—personal clothing without carrying any object

  • 90 80 70 normalized oblique-view consists of 2843 walking sequences and the combination of both views will give a total of 5804 walking sequences

Read more

Summary

Introduction

Biometrics is a way to identify individuals through their physical and behavioral characteristics such as fingerprint, gait, face, iris, and spoken speech. Gait is a biometric modality that gained public recognition and is well accepted as security assessment This is mainly because the user does not require any contact or intervention with the capturing device. The HumanID Gait Challenge [3] was released in 2005 It comprised 122 subjects with five major covariate factors (surface, shoes, carrying, camera angles, and time). Lee and Hidler [6] demonstrated that there are differences in optical flow between subjects walking on treadmill and solid ground. As such, this database may not be suitable for gait recognition evaluation as it does not reflect real world scenarios

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call