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Learning Enhanced 3D Models for Vehicle Tracking
Author(s) -
James Ferryman,
A. D. Worrall,
Stephen J. Maybank
Publication year - 1998
Publication title -
citeseer x (the pennsylvania state university)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.12.87
Subject(s) - clutter , computer science , artificial intelligence , computer vision , representation (politics) , context (archaeology) , cognitive neuroscience of visual object recognition , video tracking , segmentation , object detection , object (grammar) , matching (statistics) , tracking (education) , active appearance model , feature extraction , identification (biology) , feature (linguistics) , image segmentation , context model , image (mathematics) , radar , mathematics , pedagogy , psychology , philosophy , law , linguistics , biology , telecommunications , paleontology , political science , statistics , botany , politics
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.

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