Tracking multiple vehicles using foreground, background and motion models

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In this paper a vehicle tracking algorithm is presented based on the combination of a novel per-pixel (Gaussian Mixture Based) background model and a set of foreground models of object size, position, velocity, and colour distribution. Each pixel in the scene is ‘explained’ as either background, belonging to a foreground object, or as noise. A projective ground-plane transform is used within the foreground model to strengthen object size and velocity consistency assumptions. A learned model of typical road travel direction and speed is used to provide a prior estimate of object velocity, which is used to initialise the velocity model for each of the foreground objects. The system runs at near video framerate (>20 fps) on modest hardware and is robust assuming sufficient image resolution is available and vehicle sizes do not greatly exceed the priors on object size used in object initialisation.

论文关键词:Vehicle tracking,Background model,Gaussian mixture model

论文评审过程:Received 26 September 2002, Revised 1 July 2003, Accepted 2 July 2003, Available online 19 September 2003.

论文官网地址:https://doi.org/10.1016/S0262-8856(03)00145-8