Learning class-specific affinities for image labelling
- 1 June 2008
- conference paper
- Published by Institute of Electrical and Electronics Engineers (IEEE)
- No. 10636919,p. 1-8
- https://doi.org/10.1109/cvpr.2008.4587432
Abstract
Spectral clustering and eigenvector-based methods have become increasingly popular in segmentation and recognition. Although the choice of the pairwise similarity metric (or affinities) greatly influences the quality of the results, this choice is typically specified outside the learning framework. In this paper, we present an algorithm to learn class-specific similarity functions. Mapping our problem in a conditional random fields (CRF) framework enables us to pose the task of learning affinities as parameter learning in undirected graphical models. There are two significant advances over previous work. First, we learn the affinity between a pair of data-points as a function of a pairwise feature and (in contrast with previous approaches) the classes to which these two data-points were mapped, allowing us to work with a richer class of affinities. Second, our formulation provides a principled probabilistic interpretation for learning all of the parameters that define these affinities. Using ground truth segmentations and labellings for training, we learn the parameters with the greatest discriminative power (in an MLE sense) on the training data. We demonstrate the power of this learning algorithm in the setting of joint segmentation and recognition of object classes. Specifically, even with very simple appearance features, the proposed method achieves state-of-the-art performance on standard datasets.Keywords
This publication has 11 references indexed in Scilit:
- Multiple Class Segmentation Using A Unified Framework over Mean-Shift PatchesPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2007
- Region Classification with Markov Field Aspect ModelsPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2007
- Discriminative Random FieldsInternational Journal of Computer Vision, 2006
- Discriminative Learning of Markov Random Fields for Segmentation of 3D Scan DataPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2005
- Geometric context from a single imagePublished by Institute of Electrical and Electronics Engineers (IEEE) ,2005
- Efficient Graph-Based Image SegmentationInternational Journal of Computer Vision, 2004
- Training Products of Experts by Minimizing Contrastive DivergenceNeural Computation, 2002
- Normalized cuts and image segmentationPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2000
- Segmentation using eigenvectors: a unifying viewPublished by Institute of Electrical and Electronics Engineers (IEEE) ,1999
- Data Clustering Using a Model Granular MagnetNeural Computation, 1997