Title :
Object class recognition by unsupervised scale-invariant learning
Author :
Fergus, R. ; Perona, P. ; Zisserman, A.
Author_Institution :
Dept. of Eng. Sci., Oxford Univ., UK
Abstract :
We present a method to learn and recognize object class models from unlabeled and unsegmented cluttered scenes in a scale invariant manner. Objects are modeled as flexible constellations of parts. A probabilistic representation is used for all aspects of the object: shape, appearance, occlusion and relative scale. An entropy-based feature detector is used to select regions and their scale within the image. In learning the parameters of the scale-invariant object model are estimated. This is done using expectation-maximization in a maximum-likelihood setting. In recognition, this model is used in a Bayesian manner to classify images. The flexible nature of the model is demonstrated by excellent results over a range of datasets including geometrically constrained classes (e.g. faces, cars) and flexible objects (such as animals).
Keywords :
Bayes methods; feature extraction; image classification; image representation; learning (artificial intelligence); maximum entropy methods; maximum likelihood estimation; object recognition; optimisation; Bayesian classification; entropy-based feature detection; expectation-maximization; flexible model; flexible object; geometrically constrained class; image classification; image region selection; maximum-likelihood setting; object appearance; object aspect; object class model; object class recognition; object modeling; object occlusion; object shape; parameter learning; probabilistic representation; relative scale; scale invariant manner; scale-invariant object model estimation; unlabeled cluttered scene; unsegmented cluttered scene; unsupervised scale-invariant learning; Animals; Bayesian methods; Computer vision; Detectors; Image recognition; Layout; Maximum likelihood detection; Maximum likelihood estimation; Shape; Solid modeling;
Conference_Titel :
Computer Vision and Pattern Recognition, 2003. Proceedings. 2003 IEEE Computer Society Conference on
Print_ISBN :
0-7695-1900-8
DOI :
10.1109/CVPR.2003.1211479