Probabilistic Models of Appearance for 3-D Object Recognition

被引:0
作者
Arthur R. Pope
David G. Lowe
机构
[1] David Sarnoff Research Center,Computer Science Department
[2] University of British Columbia,undefined
来源
International Journal of Computer Vision | 2000年 / 40卷
关键词
object recognition; appearance representation; model-based vision; visual learning; clustering; model indexing;
D O I
暂无
中图分类号
学科分类号
摘要
We describe how to model the appearance of a 3-D object using multiple views, learn such a model from training images, and use the model for object recognition. The model uses probability distributions to describe the range of possible variation in the object's appearance. These distributions are organized on two levels. Large variations are handled by partitioning training images into clusters corresponding to distinctly different views of the object. Within each cluster, smaller variations are represented by distributions characterizing uncertainty in the presence, position, and measurements of various discrete features of appearance. Many types of features are used, ranging in abstraction from edge segments to perceptual groupings and regions. A matching procedure uses the feature uncertainty information to guide the search for a match between model and image. Hypothesized feature pairings are used to estimate a viewpoint transformation taking account of feature uncertainty. These methods have been implemented in an object recognition system, OLIVER. Experiments show that OLIVER is capable of learning to recognize complex objects in cluttered images, while acquiring models that represent those objects using relatively few views.
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页码:149 / 167
页数:18
相关论文
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