Title :
Tracked Object Association in Multi-camera Surveillance Network
Author :
Xiaochen Dai ; Payandeh, Sharokh
Author_Institution :
Exp. Robot. Lab., Simon Fraser Univ., Burnaby, BC, Canada
Abstract :
This paper proposes a multi-camera surveillance framework based on multiple view geometry. We address the problem of object association and consistent labeling through exploring geometrical correspondences of objects, not only in sequential frames from a single camera view but also across multiple camera views. The cameras are geometrically related through joint combination of multi-camera calibration, ground plane homography constraint, and field-of-view lines. Object detection is implemented using an adaptive Gaussian mixture model, and thereafter the information obtained from different cameras is fused so that the same object shown in different views can be assigned a unique label. Meanwhile, a virtual top-view of ground plane is synthesized to explicitly display the corresponding location and label of each detected object within a designated area-of-interest.
Keywords :
Gaussian processes; calibration; cameras; geometry; image sequences; mixture models; object detection; object tracking; surveillance; adaptive Gaussian mixture model; field-of-view lines; geometrical correspondences; ground plane homography constraint; ground plane virtual top-view; multicamera calibration; multicamera surveillance network; multiple camera views; multiple view geometry; object detection label; object detection location; sequential frames; single camera view; tracked object association; Calibration; Cameras; Equations; Labeling; Mathematical model; Object detection; Vectors; Multiple view geometry; consistent labeling; object association;
Conference_Titel :
Systems, Man, and Cybernetics (SMC), 2013 IEEE International Conference on
Conference_Location :
Manchester
DOI :
10.1109/SMC.2013.724