We propose a working set based approximate subgradient descent algorithm to minimize the margin-sensitive hinge loss arising from the soft constraints in max-margin learning frameworks, such as the structured SVM. We focus on the setting of general graphical models, such as loopy MRFs and CRFs commonly used in image segmentation, where exact inference is intractable and the most violated constraints can only be approximated, voiding the optimality guarantees of the structured SVM's cutting plane algorithm as well as reducing the robustness of existing subgradient based methods. We show that the proposed method obtains better approximate subgradients through the use of working sets, leading to improved convergence properties and increased re...
International audienceSeveral supermodular losses have been shown to improve the perceptual quality ...
The Minimum Cost Multicut Problem (MP) is a popular way for obtaining a graphdecomposition by optimi...
Abstract—Boosting is a method for learning a single accurate predictor by linearly combining a set o...
We propose a working set based approximate subgra-dient descent algorithm to minimize the margin-sen...
Berman M., Blaschko M., ''Efficient optimization for probably submodular constraints in CRFs'', NIPS...
Efficient and accurate segmentation of cellular structures in microscopic data is an essential task ...
Image labeling tasks have been a long standing challenge in computer vision. In recent years, Markov...
International audienceWe present a very general algorithm for structured prediction learning that is...
Abstract: Learning structured models using maximum margin techniques has become an indispensable too...
© 2016 IEEE. Problems of segmentation, denoising, registration and 3d reconstruction are often addre...
Segmentation schemes such as hierarchical region merging or correllation clustering rely on edge wei...
For many structured prediction problems, complex models often require adopting approximate inference...
Many structured prediction tasks involve complex models where inference is computationally intracta...
Semi-supervised learning, which uses unlabeled data to help learn a discriminative model, is espe-ci...
We present a simple and scalable algorithm for large-margin estimation of structured models, includ...
International audienceSeveral supermodular losses have been shown to improve the perceptual quality ...
The Minimum Cost Multicut Problem (MP) is a popular way for obtaining a graphdecomposition by optimi...
Abstract—Boosting is a method for learning a single accurate predictor by linearly combining a set o...
We propose a working set based approximate subgra-dient descent algorithm to minimize the margin-sen...
Berman M., Blaschko M., ''Efficient optimization for probably submodular constraints in CRFs'', NIPS...
Efficient and accurate segmentation of cellular structures in microscopic data is an essential task ...
Image labeling tasks have been a long standing challenge in computer vision. In recent years, Markov...
International audienceWe present a very general algorithm for structured prediction learning that is...
Abstract: Learning structured models using maximum margin techniques has become an indispensable too...
© 2016 IEEE. Problems of segmentation, denoising, registration and 3d reconstruction are often addre...
Segmentation schemes such as hierarchical region merging or correllation clustering rely on edge wei...
For many structured prediction problems, complex models often require adopting approximate inference...
Many structured prediction tasks involve complex models where inference is computationally intracta...
Semi-supervised learning, which uses unlabeled data to help learn a discriminative model, is espe-ci...
We present a simple and scalable algorithm for large-margin estimation of structured models, includ...
International audienceSeveral supermodular losses have been shown to improve the perceptual quality ...
The Minimum Cost Multicut Problem (MP) is a popular way for obtaining a graphdecomposition by optimi...
Abstract—Boosting is a method for learning a single accurate predictor by linearly combining a set o...