Gait-based Biometric Identification System using Triangulated Skeletal Models (TSM)

Authors

  • Azhin Tahir Sabir Azhin Tahir Sabir Department of Software Engineering, Koya University, Kurdistan Region, Iraq

DOI:

https://doi.org/10.25007/ajnu.v10n3a1223

Abstract

Human gait identification is a behavioral biometric technology which can be used to monitor human beings without user interaction. Recent researches are more focused on investigating gait as one of the biometric traits.  Further, gait recognition aims to analyze and identify human behavioral activities and may be implemented in different scenarios including access control and criminal analysis. However, using various techniques in relation to image processing and obtaining better accuracy are remaining challenges. In last decade, Microsoft has introduced the Kinect sensor as an innovative sensor to provide image characteristics, precisely. Therefore, this article uses a Kinect sensor to extract gait characteristics to be used in individual recognition. A set of Triangulated shape are generated as new feature vector and called Triangulated Skeletal Model (TSM). Nearest Neighbor technique is utilized to do the recognition issue based on leave-one-out strategy. The experimental outcomes indicated that the recommended technique provides significant results and outperforms other comparative similar techniques with accuracy of 93.46%.  

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Published

2021-08-15

How to Cite

Tahir Sabir, A. (2021). Gait-based Biometric Identification System using Triangulated Skeletal Models (TSM). Academic Journal of Nawroz University, 10(3), 202–208. https://doi.org/10.25007/ajnu.v10n3a1223

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Articles