PASCAL - Pattern Analysis, Statistical Modelling and Computational Learning

Associative Hierarchical CRFs for Object Class Image Segmentation
Lubor Ladicky, Chris Russell, Pushmeet Kohli and Philip Torr
In: IEEE International Conference on Computer Vision (ICCV), 27 Sep - 4 Oct 2009, Kyoto, Japan.


Most methods for object class segmentation are formulated as a labelling problem over a single choice of quantisation of an image space - pixels, segments or group of segments. It is well known that each quantisation has its fair share of pros and cons; and the existence of a common optimal quantisation level suitable for all object categories is highly unlikely. Motivated by this observation, we propose a hierarchical random field model, that allows integration of features computed at different levels of the quantisation hierarchy. MAP inference in this model can be performed efficiently using powerful graph cut based move making algorithms. Our framework generalises much of the previous work based on pixels or segments. We evaluate its efficiency on some of the most challenging data-sets for object class segmentation, and show it obtains state-of-the-art results.

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EPrint Type:Conference or Workshop Item (Poster)
Project Keyword:Project Keyword UNSPECIFIED
Subjects:Machine Vision
Learning/Statistics & Optimisation
ID Code:5447
Deposited By:Karteek Alahari
Deposited On:29 August 2009