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Person Monitoring by Full Body Tracking in Uniform Crowd Environment

Authors :
Zhang, Zhibo
Alremeithi, Omar
Almheiri, Maryam
Albeshr, Marwa
Zhang, Xiaoxiong
Javed, Sajid
Werghi, Naoufel
Publication Year :
2022

Abstract

Full body trackers are utilized for surveillance and security purposes, such as person-tracking robots. In the Middle East, uniform crowd environments are the norm which challenges state-of-the-art trackers. Despite tremendous improvements in tracker technology documented in the past literature, these trackers have not been trained using a dataset that captures these environments. In this work, we develop an annotated dataset with one specific target per video in a uniform crowd environment. The dataset was generated in four different scenarios where mainly the target was moving alongside the crowd, sometimes occluding with them, and other times the camera's view of the target is blocked by the crowd for a short period. After the annotations, it was used in evaluating and fine-tuning a state-of-the-art tracker. Our results have shown that the fine-tuned tracker performed better on the evaluation dataset based on two quantitative evaluation metrics, compared to the initial pre-trained tracker.<br />Comment: Accepted by the conference International Conference on Advances in Data-driven Computing and Intelligent Systems (ADCIS 2022), published in Scopus indexed Springer Book Series, 'Lecture Notes in Networks and Systems'

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2209.01274
Document Type :
Working Paper