Title of article :
Combining Generative and Discriminative Models in a Framework for Articulated Pose Estimation
Author/Authors :
RO´MER ROSALES، نويسنده , , Stan Sclaroff، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Pages :
26
From page :
251
To page :
276
Abstract :
We develop a method for the estimation of articulated pose, such as that of the human body or the human hand, from a single (monocular) image. Pose estimation is formulated as a statistical inference problem, where the goal is to find a posterior probability distribution over poses as well as a maximum a posteriori (MAP) estimate. The method combines two modeling approaches, one discriminative and the other generative. The discriminative model consists of a set of mapping functions that are constructed automatically from a labeled training set of body poses and their respective image features. The discriminative formulation allows for modeling ambiguous, one-to-many mappings (through the use of multi-modal distributions) that may yield multiple valid articulated pose hypotheses from a single image. The generative model is defined in terms of a computer graphics rendering of poses. While the generative model offers an accurateway to relate observed (image features) and hidden (body pose) random variables, it is difficult to use it directly in pose estimation, since inference is computationally intractable. In contrast, inference with the discriminative model is tractable, but considerably less accurate for the problem of interest. A combined discriminative/generative formulation is derived that leverages the complimentary strengths of both models in a principled framework for articulated pose inference. Two efficientMAPpose estimation algorithms are derived from this formulation; the first is deterministic and the second non-deterministic. Performance of the framework is quantitatively evaluated in estimating articulated pose of both the human hand and human body.
Keywords :
statistical inference , generativeand discriminative models , mixture models , Expectation maximization algorithm , human body pose , hand pose , nonrigid and articulated pose estimation
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION
Serial Year :
2006
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION
Record number :
828177
Link To Document :
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