Sciweavers

CVPR
2010
IEEE

Efficient Piecewise Learning for Conditional Random Fields

14 years 7 months ago
Efficient Piecewise Learning for Conditional Random Fields
Conditional Random Field models have proved effective for several low-level computer vision problems. Inference in these models involves solving a combinatorial optimization problem, with methods such as graph cuts, belief propagation. Although several methods have been proposed to learn the model parameters from training data, they suffer from various drawbacks. Learning these parameters involves computing the partition function, which is intractable. To overcome this, state-of-the-art structured learning methods frame the problem as one of large margin estimation. Iterative solutions have been proposed to solve the resulting convex optimization problem. Each iteration involves solving an inference problem over all the labels, which limits the efficiency of these structured methods. In this paper we present an efficient large margin piecewise learning method which is widely applicable. We show how the resulting optimization problem can be reduced to an equivalent convex problem wit...
Karteek Alahari, Phil Torr
Added 25 Apr 2010
Updated 14 May 2010
Type Conference
Year 2010
Where CVPR
Authors Karteek Alahari, Phil Torr
Comments (0)