In this work, we investigated the potential of a recently proposed parameter learning algorithm for Conditional Random Fields (CRFs). Parameters of a pairwise CRF are estimated via a stochastic subgradient descent of a max-margin learning problem. We compared the performance of our brain tumor segmentation method using parameter learning to a version using hand-tuned parameters. Preliminary results on a subset of the BRATS2015 training set show that parameter learning leads to comparable or even improved performance. In addition, we also performed experiments to study the impact of the composition of training data on the final segmentation performance. We found that models trained on mixed data sets achieve reasonable performance compared t...
Abstract Probabilistic graphical models have had a tremendous impact in machine learning and approac...
Conditional Random Fields (CRFs) [Lafferty et al., 2001] can offer computational and statistical adv...
We present LS-CRF, a new method for very efficient large-scale training of Conditional Random Fields...
Current atlas-based methods for MRI analysis assume brain images map to a “normal” template. This as...
International audienceWe consider a general modelling strategy to handle in a unified way a number o...
Tumor is an uncontrolled growth of tissues in any part of the body. Tumors are of different types an...
During the last few years most work done on the task of image segmentation has been focused on deep ...
Grid conditional random fields (CRFs) are widely applied in both natural and medical image segmentat...
Abstract. In this paper we propose a method to segment brain tumor regions in digital pathology imag...
Delineating brain tumor boundaries from magnetic resonance images is an essential task for the analy...
Are we using the right potential functions in the Conditional Random Field models that are popular i...
Are we using the right potential functions in the Conditional Random Field models that are popular i...
Recent progress in per-pixel object class labeling of natural images can be attributed to the use of...
Abstract Probabilistic graphical models have had a tremendous impact in machine learning and approac...
Conditional Random Fields (CRFs) [Lafferty et al., 2001] can offer computational and statistical adv...
We present LS-CRF, a new method for very efficient large-scale training of Conditional Random Fields...
Current atlas-based methods for MRI analysis assume brain images map to a “normal” template. This as...
International audienceWe consider a general modelling strategy to handle in a unified way a number o...
Tumor is an uncontrolled growth of tissues in any part of the body. Tumors are of different types an...
During the last few years most work done on the task of image segmentation has been focused on deep ...
Grid conditional random fields (CRFs) are widely applied in both natural and medical image segmentat...
Abstract. In this paper we propose a method to segment brain tumor regions in digital pathology imag...
Delineating brain tumor boundaries from magnetic resonance images is an essential task for the analy...
Are we using the right potential functions in the Conditional Random Field models that are popular i...
Are we using the right potential functions in the Conditional Random Field models that are popular i...
Recent progress in per-pixel object class labeling of natural images can be attributed to the use of...
Abstract Probabilistic graphical models have had a tremendous impact in machine learning and approac...
Conditional Random Fields (CRFs) [Lafferty et al., 2001] can offer computational and statistical adv...
We present LS-CRF, a new method for very efficient large-scale training of Conditional Random Fields...