CVJul 26, 2015

Capturing the Dynamics of Pedestrian Traffic Using a Machine Vision System

arXiv:1507.07203v12 citations
Originality Synthesis-oriented
AI Analysis

This work addresses pedestrian behavior analysis for traffic management, but it is incremental as it applies existing tracking methods to new scenarios.

The authors developed a machine vision system to automatically track pedestrian dynamics in four traffic scenarios, deriving velocity and acceleration from video frames and displaying results through graphs and visual markers.

We developed a machine vision system to automatically capture the dynamics of pedestrians under four different traffic scenarios. By considering the overhead view of each pedestrian as a digital object, the system processes the image sequences to track the pedestrians. Considering the perspective effect of the camera lens and the projected area of the hallway at the top-view scene, the distance of each tracked object from its original position to its current position is approximated every video frame. Using the approximated distance and the video frame rate (30 frames per second), the respective velocity and acceleration of each tracked object are later derived. The quantified motion characteristics of the pedestrians are displayed by the system through 2-dimensional graphs of the kinematics of motion. The system also outputs video images of the pedestrians with superimposed markers for tracking. These visual markers were used to visually describe and quantify the behavior of the pedestrians under different traffic scenarios.

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