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Pedestrian Origin-Destination Estimation Based on Multi-Camera Person Re-Identification.

Yan Li1,2, Majid Sarvi1, Kourosh Khoshelham1

  • 1Department of Infrastructure Engineering, University of Melbourne, Melbourne, VIC 3010, Australia.

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|October 14, 2022
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Summary

This study introduces an image-based framework for estimating pedestrian origin-destination (O-D) data using CCTV footage. This method overcomes limitations of traditional techniques, enabling better pedestrian flow management and facility planning.

Keywords:
multi-view video surveillancepedestrian origin–destination estimationpedestrian trajectoriesperson re-identification

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Area of Science:

  • Intelligent Transport Systems
  • Computer Vision
  • Urban Planning

Background:

  • Pedestrian origin-destination (O-D) estimates are crucial for managing pedestrian facilities, including flow simulation and crowd control.
  • Existing O-D data collection methods (surveys, mobile sensing, smart cards) are often costly, time-consuming, or incomplete, especially for facilities without clear entrances/exits.

Purpose of the Study:

  • To develop and evaluate an image-based framework for accurate pedestrian O-D estimation.
  • To address the limitations of current O-D data collection techniques for pedestrian facilities.
  • To leverage CCTV camera networks and image processing for improved pedestrian flow analysis.

Main Methods:

  • Proposed an image-based O-D estimation framework utilizing CCTV camera coverage.
  • Developed a method to identify individuals across disjoint camera views to generate O-D trajectories.
  • Compared and improved state-of-the-art deep neural networks (DNNs) for person re-identification under varying congestion levels.
  • Generated an O-D matrix from trajectories and calculated resident times.

Main Results:

  • Accurate generation of pedestrian O-D trajectories by identifying individuals across multiple camera views.
  • Improved performance of deep neural networks for person re-identification in pedestrian environments.
  • Creation of an O-D matrix and calculation of resident times, providing data for facility improvement.

Conclusions:

  • The proposed image-based framework offers a viable solution for comprehensive pedestrian O-D estimation.
  • This approach enhances pedestrian facility management through accurate flow simulation and operational insights.
  • The study highlights the potential of the 'Internet of Cameras' for intelligent transport infrastructure management and suggests areas for future research.