BMVC Index3D Trajectories from a Single Viewpoint using ShadowsViewing Real-World ImageryReal-time Visual Recovery of Pose using Line Tracking in Multiple Cameras

Learning Enhanced 3D Models for Vehicle Tracking
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J. M. Ferryman, A. D. Worrall, S. J. Maybank

Computational Vision Group
Department of Computer Science
University of Reading
Reading
Berkshire RG6 6AY UK

Contact: J.M.Ferryman@reading.ac.uk

Abstract

This paper presents an enhanced hypothesis verification strategy for 3D object recognition. A new learning methodology is presented which integrates the traditional dichotomic object-centred and appearance-based representations in computer vision giving improved hypothesis verification under iconic matching. The ""appearance"" of a 3D object is learnt using an eigenspace representation obtained as it is tracked through a scene. The feature representation implicitly models the background and the objects observed enabling the segmentation of the objects from the background. The method is shown to enhance model-based tracking, particularly in the presence of clutter and occlusion, and to provide a basis for identification. The unified approach is discussed in the context of the traffic surveillance domain. The approach is demonstrated on real-world image sequences and compared to previous (edge-based) iconic evaluation techniques.

Keywords: Model-Based Vision, Appearance-Based Models, Vehicle Tracking, Deformable Models, Industrial Applications
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BMVC Index3D Trajectories from a Single Viewpoint using ShadowsViewing Real-World ImageryReal-time Visual Recovery of Pose using Line Tracking in Multiple Cameras

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