Learning the Behavior of Users in a Public Space through Video Tracking

Wei Yan and D. A. Forsyth

EECS Department
University of California, Berkeley
Technical Report No. UCB/CSD-04-1310
2004

http://www2.eecs.berkeley.edu/Pubs/TechRpts/2004/CSD-04-1310.pdf

The paper describes a video tracking system that tracks and analyzes the behavioral pattern of users in a public space. We have obtained important statistical measurements about users' behavior, which can be used to evaluate architectural design in terms of human spatial behavior and model the behavior of users in public spaces. Previously, such measurements could only be obtained through costly manual processes, e.g. behavioral mapping and time-lapse filming with human examiners. Our system has automated the process of analyzing the behavior of users. The system consists of a head detector for detecting people in each single frame of the video and data association for tracking people through frames. We compared the results obtained using our system with those obtained by manual counting, for a small data set, and found the results to be fairly accurate. We then applied the system to a large-scale data set and obtained substantial statistical measurements of parameters such as the total number of users who entered the space, the total number of users who sat by a fountain, the time that each spent by the fountain, etc. These statistics allow fundamental rethinking of the way people use a public space.


BibTeX citation:

@techreport{Yan:CSD-04-1310,
    Author = {Yan, Wei and Forsyth, D. A.},
    Title = {Learning the Behavior of Users in a Public Space through Video Tracking},
    Institution = {EECS Department, University of California, Berkeley},
    Year = {2004},
    URL = {http://www2.eecs.berkeley.edu/Pubs/TechRpts/2004/5592.html},
    Number = {UCB/CSD-04-1310},
    Abstract = {The paper describes a video tracking system that tracks and analyzes the behavioral pattern of users in a public space. We have obtained important statistical measurements about users' behavior, which can be used to evaluate architectural design in terms of human spatial behavior and model the behavior of users in public spaces. Previously, such measurements could only be obtained through costly manual processes, e.g. behavioral mapping and time-lapse filming with human examiners. Our system has automated the process of analyzing the behavior of users. The system consists of a head detector for detecting people in each single frame of the video and data association for tracking people through frames. We compared the results obtained using our system with those obtained by manual counting, for a small data set, and found the results to be fairly accurate. We then applied the system to a large-scale data set and obtained substantial statistical measurements of parameters such as the total number of users who entered the space, the total number of users who sat by a fountain, the time that each spent by the fountain, etc. These statistics allow fundamental rethinking of the way people use a public space.}
}

EndNote citation:

%0 Report
%A Yan, Wei
%A Forsyth, D. A.
%T Learning the Behavior of Users in a Public Space through Video Tracking
%I EECS Department, University of California, Berkeley
%D 2004
%@ UCB/CSD-04-1310
%U http://www2.eecs.berkeley.edu/Pubs/TechRpts/2004/5592.html
%F Yan:CSD-04-1310