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    A model-based approach for rigid object recognition

    Access Status
    Fulltext not available
    Authors
    Chong, C.
    Tan, Tele
    Lim, Fee-Lee
    Date
    2006
    Type
    Conference Paper
    
    Metadata
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    Citation
    Chong, C. and Tan, T. and Lim, F. 2006. A model-based approach for rigid object recognition, in Tang, Y.Y. et al (ed), 18th International Conference on Pattern Recognition, Aug 20-24 2006, pp. 116-120. Hong Kong: IEEE.
    Source Title
    Proceedings of the 18th International Conference on Pattern Recognition Vol 3
    Source Conference
    8th International Conference on Pattern Recognition
    DOI
    10.1109/ICPR.2006.103
    ISBN
    0769525210
    School
    Department of Computing
    URI
    http://hdl.handle.net/20.500.11937/18574
    Collection
    • Curtin Research Publications
    Abstract

    Most object recognition systems require large databases of real images for classifier training. To collect real images for this purpose is a difficult and expensive process. This paper introduces a unified framework based on the creation and use of synthetic images for training various classifiers to achieve recognition of real-world objects. A 3D model of the object (i.e. trolley in this case) is constructed from a minimum of two photographs. The constructed 3D model is used to automatically generate the relevant synthetic images that are subsequently used to train the Adaboost and support vector machine-based recognition systems. Experimental results obtained are very encouraging suggesting that synthetically generated images generated by our approach can augment the real training samples used in current recognition systems

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