Title :
Detection- and Trajectory-Level Exclusion in Multiple Object Tracking
Author :
Milan, Anton ; Schindler, Kaspar ; Roth, Stefan
Abstract :
When tracking multiple targets in crowded scenarios, modeling mutual exclusion between distinct targets becomes important at two levels: (1) in data association, each target observation should support at most one trajectory and each trajectory should be assigned at most one observation per frame, (2) in trajectory estimation, two trajectories should remain spatially separated at all times to avoid collisions. Yet, existing trackers often sidestep these important constraints. We address this using a mixed discrete-continuous conditional random field (CRF) that explicitly models both types of constraints: Exclusion between conflicting observations with super modular pairwise terms, and exclusion between trajectories by generalizing global label costs to suppress the co-occurrence of incompatible labels (trajectories). We develop an expansion move-based MAP estimation scheme that handles both non-sub modular constraints and pairwise global label costs. Furthermore, we perform a statistical analysis of ground-truth trajectories to derive appropriate CRF potentials for modeling data fidelity, target dynamics, and inter-target occlusion.
Keywords :
maximum likelihood estimation; object tracking; random processes; sensor fusion; target tracking; CRF; CRF potentials; data association; data fidelity modeling; detection-level exclusion; discrete-continuous conditional random field; expansion move-based MAP estimation scheme; ground-truth trajectories; intertarget occlusion; multiple object tracking; multiple target tracking; mutual exclusion modeling; nonsubmodular constraints; statistical analysis; supermodular pairwise terms; target dynamics; target observation; trajectory estimation; trajectory-level exclusion; Data models; Detectors; Estimation; Optimization; Target tracking; Trajectory; Multi-object tracking; tracking-by-detection; visual surveillance;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2013 IEEE Conference on
Conference_Location :
Portland, OR
DOI :
10.1109/CVPR.2013.472