Identification and Recovery of Trajectories of Dynamic Objects from Stereo Images

Abstract A modified approach to recovering the trajectories of dynamic objects in a scene from stereo images is proposed. This approach is based on the use of an extended point representation of objects, visual odometry, and a novel set of algorithms. Object identification algorithms and the block diagram of the step-by-step data processing are described. Results of numerical experiments for synthetic scenes are presented.

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