Multiple Vehicle Detection and Tracking in Hard Real Time.
Abstract
A vision system has been developed that recognizes and tracks multiple vehicles from sequences of gray scale images taken from a moving car in hard real time. Recognition is accomplished by combining the analysis of single image frames with the analysis of the motion information provided by multiple consecutive image frames. In single image frames, cars are recognized by matching deformable gray scale templates, by detecting image features, such as corners, and by evaluating how these features relate to each other. Cars are also recognized by differencing consecutive image frames and by tracking motion parameters that are typical for cars. The vision system utilizes the hard real time operating system Maruti which guarantees that the timing constraints on the various vision processes are satisfied. The dynamic creation and termination of tracking processes optimizes the amount of computational resources spent and allows fast detection and tracking of multiple cars. Experimental results demonstrate robust, real time recognition and tracking over thousands of image frames.
Document Details
- Document Type
- Technical Report
- Publication Date
- Jul 01, 1996
- Accession Number
- ADA313490
Entities
People
- Esin Haritaoglu
- Larry S. Davis
- Margrit Betke
Organizations
- University of Maryland