Appearance-based recognition of 3-D objects by cluttered background and occlusions

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In this article we present a new appearance-based approach for the classification and the localization of 3-D objects in complex scenes. A main problem for object recognition is that the size and the appearance of the objects in the image vary for 3-D transformations. For this reason, we model the region of the object in the image as well as the object features themselves as functions of these transformations. We integrate the model into a statistical framework, and so we can deal with noise and illumination changes. To handle heterogeneous background and occlusions, we introduce a background model and an assignment function. Thus, the object recognition system becomes robust, and a reliable distinction, which features belong to the object and which to the background, is possible. Experiments on three large data sets that contain rotations orthogonal to the image plane and scaling with together more than 100 000 images show that the approach is well suited for this task.

论文关键词:Object recognition,Appearance-based,Object representation,Statistical modelling,Background model,3-D transformation of objects

论文评审过程:Received 30 September 2003, Revised 28 October 2004, Accepted 28 October 2004, Available online 25 January 2005.

论文官网地址:https://doi.org/10.1016/j.patcog.2004.10.008