M 2 Tracker: a multi-view approach to segmenting and tracking people in a cluttered scene
Title | M 2 Tracker: a multi-view approach to segmenting and tracking people in a cluttered scene |
Publication Type | Journal Articles |
Year of Publication | 2003 |
Authors | Mittal A, Davis LS |
Journal | International Journal of Computer Vision |
Volume | 51 |
Issue | 3 |
Pagination | 189 - 203 |
Date Published | 2003/// |
Abstract | When occlusion is minimal, a single camera is generally sufficient to detect and track objects. However, when the density of objects is high, the resulting occlusion and lack of visibility suggests the use of multiple cameras and collaboration between them so that an object is detected using information available from all the cameras in the scene.In this paper, we present a system that is capable of segmenting, detecting and tracking multiple people in a cluttered scene using multiple synchronized surveillance cameras located far from each other. The system is fully automatic, and takes decisions about object detection and tracking using evidence collected from many pairs of cameras. Innovations that help us tackle the problem include a region-based stereo algorithm capable of finding 3D points inside an object knowing only the projections of the object (as a whole) in two views, a segmentation algorithm using bayesian classification and the use of occlusion analysis to combine evidence from different camera pairs. |