International audienceSeveral supermodular losses have been shown to improve the perceptual quality of image segmentation in a discriminative framework such as a structured output support vector machine (SVM). These loss functions do not necessarily have the same structure as the segmentation inference algorithm, and in general, we may have to resort to generic submodular minimization algorithms for loss augmented inference. Although these come with polynomial time guarantees, they are not practical to apply to image scale data. Many supermodular losses come with strong optimization guarantees, but are not readily incorporated in a loss augmented graph cuts procedure. This motivates our strategy of employing the alternating direction method...
International audienceThe accuracy of information retrieval systems is often measured using average ...
Berman M., Blaschko M., ''Efficient optimization for probably submodular constraints in CRFs'', NIPS...
International audienceWe present a very general algorithm for structured prediction learning that is...
© 2016. The copyright of this document resides with its authors. Several supermodular losses have be...
International audienceSeveral supermodular losses have been shown to improve the perceptual quality ...
The ultimate goal of discriminative learning is to train a prediction system by optimizing a desired...
We propose a working set based approximate subgradient descent algorithm to minimize the margin-sens...
Efficient and accurate segmentation of cellular structures in microscopic data is an essential task ...
Semantic segmentation is among the most significant applications in computer vision. The goal of sem...
In discriminative machine learning one is interested in training a system to opti-mize a certain des...
International audienceWe consider the structured-output prediction problem through probabilistic app...
International audienceIn this work we use loopy part models to segment ensembles of organs in medica...
Thanks to their ability to learn flexible data-driven losses, Generative Adversarial Networks (GANs)...
Learning functional dependencies (mapping) between arbitrary input and output spaces is one of the m...
Discriminative training for structured outputs has found increasing applications in areas such as na...
International audienceThe accuracy of information retrieval systems is often measured using average ...
Berman M., Blaschko M., ''Efficient optimization for probably submodular constraints in CRFs'', NIPS...
International audienceWe present a very general algorithm for structured prediction learning that is...
© 2016. The copyright of this document resides with its authors. Several supermodular losses have be...
International audienceSeveral supermodular losses have been shown to improve the perceptual quality ...
The ultimate goal of discriminative learning is to train a prediction system by optimizing a desired...
We propose a working set based approximate subgradient descent algorithm to minimize the margin-sens...
Efficient and accurate segmentation of cellular structures in microscopic data is an essential task ...
Semantic segmentation is among the most significant applications in computer vision. The goal of sem...
In discriminative machine learning one is interested in training a system to opti-mize a certain des...
International audienceWe consider the structured-output prediction problem through probabilistic app...
International audienceIn this work we use loopy part models to segment ensembles of organs in medica...
Thanks to their ability to learn flexible data-driven losses, Generative Adversarial Networks (GANs)...
Learning functional dependencies (mapping) between arbitrary input and output spaces is one of the m...
Discriminative training for structured outputs has found increasing applications in areas such as na...
International audienceThe accuracy of information retrieval systems is often measured using average ...
Berman M., Blaschko M., ''Efficient optimization for probably submodular constraints in CRFs'', NIPS...
International audienceWe present a very general algorithm for structured prediction learning that is...