eScholarship Repository eScholarship Repository California Digital Library
eScholarship > ITS > PATH > REPORTS > Paper UCB-ITS-PRR-95-6

PATH Papers

PATH Website

Policies

Search PATH

Submit a Paper

Notify me of new papers

institute_logo

Institute of Transportation Studies
California Partners for Advanced Transit and Highways (PATH)
University of California, Berkeley

PATH Papers  •  PATH Website  •  Policies  •  Search  •  Submit a Paper

A Machine Vision Based Surveillance System For California Roads
J. Malik
S. Russell

Download the Paper (485 K, PDF file) - January 1, 1995 Tell a colleague about it.
Printing Tips: Select 'print as image' in the Acrobat print dialog if you have trouble printing.

ABSTRACT:

In this paper, the authors describe the successful combination of a low- level, vision-based surveillance system with a high-level, symbolic reasoner based on dynamic belief networks. This prototype system provides robust, high-level information about traffic scenes. The machine vision component of the system employs a correlation-based tracker and a physical motion model using a Kalman filter to extract vehicle trajectories over a sequence of traffic scene images. The symbolic reasoning component uses a dynamic belief network to make inferences about traffic events. In this paper, the authors discuss the key tasks of the vision and reasoning components as well as their integration into a working prototype.

SUGGESTED CITATION:
J. Malik and S. Russell, "A Machine Vision Based Surveillance System For California Roads" (January 1, 1995). California Partners for Advanced Transit and Highways (PATH). Research Reports: Paper UCB-ITS-PRR-95-6.
http://repositories.cdlib.org/its/path/reports/UCB-ITS-PRR-95-6

 
bar
Open Archives Initiative eScholarship is a service of the California Digital Library bepress