DocumentCode :
1082347
Title :
OBJCUT: Efficient Segmentation Using Top-Down and Bottom-Up Cues
Author :
Kumar, Pawan M. ; Torr, P.H.S. ; Zisserman, A.
Author_Institution :
Comput. Sci. Dept., Stanford Univ., Stanford, CA, USA
Volume :
32
Issue :
3
fYear :
2010
fDate :
3/1/2010 12:00:00 AM
Firstpage :
530
Lastpage :
545
Abstract :
We present a probabilistic method for segmenting instances of a particular object category within an image. Our approach overcomes the deficiencies of previous segmentation techniques based on traditional grid conditional random fields (CRF), namely that 1) they require the user to provide seed pixels for the foreground and the background and 2) they provide a poor prior for specific shapes due to the small neighborhood size of grid CRF. Specifically, we automatically obtain the pose of the object in a given image instead of relying on manual interaction. Furthermore, we employ a probabilistic model which includes shape potentials for the object to incorporate top-down information that is global across the image, in addition to the grid clique potentials which provide the bottom-up information used in previous approaches. The shape potentials are provided by the pose of the object obtained using an object category model. We represent articulated object categories using a novel layered pictorial structures model. Nonarticulated object categories are modeled using a set of exemplars. These object category models have the advantage that they can handle large intraclass shape, appearance, and spatial variation. We develop an efficient method, OBJCUT, to obtain segmentations using our probabilistic framework. Novel aspects of this method include: 1) efficient algorithms for sampling the object category models of our choice and 2) the observation that a sampling-based approximation of the expected log-likelihood of the model can be increased by a single graph cut. Results are presented on several articulated (e.g., animals) and nonarticulated (e.g., fruits) object categories. We provide a favorable comparison of our method with the state of the art in object category specific image segmentation, specifically the methods of Leibe and Schiele and Schoenemann and Cremers.
Keywords :
feature extraction; graph theory; image representation; image sampling; image segmentation; maximum likelihood estimation; probability; OBJCUT method; articulated object representation; bottom-up cues; expected log-likelihood; grid clique potential; image segmentation; layered pictorial structure model; object appearance; object category model; object pose; object sampling; object shape potential; probabilistic method; sampling-based approximation; seed pixels; single graph cut; spatial variation; top-down cues; Object category specific segmentation; conditional random fields; generalized EM; graph cuts.;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2009.16
Filename :
4760145
Link To Document :
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