@INPROCEEDINGS{Reulke, author = {Reulke, Ralf and Bauer, Sascha and Döring, Thomas and Meysel, Frederik}, title = {Traffic Surveillance using Multi-Camera Detection and Multi-Target Tracking}, booktitle = {Image and Vision Computing New Zealand }, year = {2010}, editor = {Cree, Michael}, publisher = {Cree, Michael}, abstract = {Non-intrusive video-detection for traffic flow observation and surveillance is the primary alternative to conventional inductive loop detectors. Video Image Detection Systems (VIDS) can derive traffic parameters by means of image processing and pattern recognition methods. Existing VIDS emulate the inductive loops. We propose a trajectory based recognition algorithm to expand the common approach and to obtain new types of information (e.g. queue length or erratic movements). Different views of the same area by more than one camera sensor is necessary, because of the typical limitations of single camera systems, resulting from the occlusion effect of other cars, trees and traffic signs. A distributed cooperative multi-camera system enables a significant enlargement of the observation area. The trajectories are derived from multi-target tracking. The fusion of object data from different cameras is done using a tracking method. This approach opens up opportunities to identify and specify traffic objects, their location, speed and other characteristic object information. The system provides new derived and consolidated information about traffic participants. Thus, this approach is also beneficial for a description of individual traffic participants. Keywords: Multi-camera system, fixed-viewpoint camera, cooperative distributed vision, multi-camera orientation, multi-target tracking}, keywords ={}, owner ={}, timestamp ={} }