One global optimization method in network flow model for multiple object tracking

Z He, Y Cui, H Wang, X You, CLP Chen - Knowledge-Based Systems, 2015 - Elsevier
Knowledge-Based Systems, 2015Elsevier
In this paper, we address the task of automatically tracking a variable number of objects in
the scene of a monocular and uncalibrated camera. We propose a global optimization
method in network flow model for multiple object tracking. This approach extends recent
work which formulates the tracking-by-detection into a maximum-a posteriori (MAP) data
association problem. We redefine the observation likelihood and the affinity between
observations to handle long term occlusions. Moreover, an improved greedy algorithm is …
Abstract
In this paper, we address the task of automatically tracking a variable number of objects in the scene of a monocular and uncalibrated camera. We propose a global optimization method in network flow model for multiple object tracking. This approach extends recent work which formulates the tracking-by-detection into a maximum-a posteriori (MAP) data association problem. We redefine the observation likelihood and the affinity between observations to handle long term occlusions. Moreover, an improved greedy algorithm is designed to solve min-cost flow, reducing the amount of ID switches apparently. Furthermore, a linear hypothesis method is proposed to fill up the gaps in the trajectories. The experiment results demonstrate that our method is effective and efficient, and outperforms the state-of-the-art approaches on several benchmark datasets.
Elsevier
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