Visual object tracking via iterative ant particle filtering

IET Image Processing(2020)

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摘要
Visual object tracking remains a challenging task in computer vision although important progress has been made in the past decades. Particle filter (PF) is now a standard framework for solving non-linear/non-Gaussian problems, especially in visual object tracking. This study proposes an ant colony optimisation (ACO)-based iterative PF for object tracking. In the proposed method, the basic idea of ...
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关键词
ant colony optimisation,computer vision,iterative methods,Kalman filters,nonlinear filters,object tracking,particle filtering (numerical methods)
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