Title :
Efficient discriminative learning of parts-based models
Author :
Kumar, M. Pawan ; Zisserman, Andrew ; Torr, Philip H S
Author_Institution :
Comput. Sci. Dept., Stanford Univ., Stanford, CA, USA
fDate :
Sept. 29 2009-Oct. 2 2009
Abstract :
Supervised learning of a parts-based model can be formulated as an optimization problem with a large (exponential in the number of parts) set of constraints. We show how this seemingly difficult problem can be solved by (i) reducing it to an equivalent convex problem with a small, polynomial number of constraints (taking advantage of the fact that the model is tree-structured and the potentials have a special form); and (ii) obtaining the globally optimal model using an efficient dual decomposition strategy. Each component of the dual decomposition is solved by a modified version of the highly optimized SVM-Light algorithm. To demonstrate the effectiveness of our approach, we learn human upper body models using two challenging, publicly available datasets. Our model accounts for the articulation of humans as well as the occlusion of parts. We compare our method with a baseline iterative strategy as well as a state of the art algorithm and show significant efficiency improvements.
Keywords :
convex programming; learning (artificial intelligence); object recognition; polynomials; pose estimation; support vector machines; constraint set; convex problem; dual decomposition strategy; efficient discriminative learning; human upper body models; optimal model; optimization problem; optimized SVM light algorithm; part occlusion; parts based models; polynomial; supervised learning; Automation; Educational institutions; Geometry; Information science; Jacobian matrices; Layout; Least squares approximation; Least squares methods; Light sources; Lighting;
Conference_Titel :
Computer Vision, 2009 IEEE 12th International Conference on
Conference_Location :
Kyoto
Print_ISBN :
978-1-4244-4420-5
Electronic_ISBN :
1550-5499
DOI :
10.1109/ICCV.2009.5459192