In this paper we propose an improved mean-field inference algorithm for the fully connected paired CRFs model. The improved method Message Passing operation is changed from the original linear convolution to the present graph attention operation, while the process of the inference algorithm is turned into the forward process of the GAT model. Combined with the mean-field inferred label distribution, it is equivalent to the output of a classifier with only unary potential. To this end, we propose a graph attention network model with residual structure, and the model approach is applicable to all sequence annotation tasks, such as pixel-level image semantic segmentation tasks as well as text annotation tasks
We propose a general and versatile framework that significantly speeds-up graph-ical model optimizat...
Conditional Random Fields (CRFs) are one of the core technologies in computer vision, and have been ...
Abstract. Conditional Random Fields (CRFs) are widely known to scale poorly, particularly for tasks ...
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...
Most state-of-the-art techniques for multi-class image segmentation and labeling use conditional ran...
The mean field algorithm is a widely used approximate inference algorithm for graphical models whose...
The mean field algorithm is a widely used approximate inference algorithm for graphical models whose...
With the rapid development and application of CRFs (Conditional Random Fields) in computer vision, m...
International audienceIn this work we introduce a structured prediction model that endows the Deep G...
Abstract. Probabilistic inference beyond MAP estimation is of interest in computer vision, both for ...
The Conditional Random Field (CRF) is a popular tool for object-based image segmentation. CRFs used ...
Semantic segmentation and other pixel-level labeling tasks have made significant progress recently d...
Semantic segmentation and other pixel-level labeling tasks have made significant progress recently d...
For the challenging semantic image segmentation task the best performing models have traditionally c...
We propose a general and versatile framework that significantly speeds-up graph-ical model optimizat...
Conditional Random Fields (CRFs) are one of the core technologies in computer vision, and have been ...
Abstract. Conditional Random Fields (CRFs) are widely known to scale poorly, particularly for tasks ...
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...
Most state-of-the-art techniques for multi-class image segmentation and labeling use conditional ran...
The mean field algorithm is a widely used approximate inference algorithm for graphical models whose...
The mean field algorithm is a widely used approximate inference algorithm for graphical models whose...
With the rapid development and application of CRFs (Conditional Random Fields) in computer vision, m...
International audienceIn this work we introduce a structured prediction model that endows the Deep G...
Abstract. Probabilistic inference beyond MAP estimation is of interest in computer vision, both for ...
The Conditional Random Field (CRF) is a popular tool for object-based image segmentation. CRFs used ...
Semantic segmentation and other pixel-level labeling tasks have made significant progress recently d...
Semantic segmentation and other pixel-level labeling tasks have made significant progress recently d...
For the challenging semantic image segmentation task the best performing models have traditionally c...
We propose a general and versatile framework that significantly speeds-up graph-ical model optimizat...
Conditional Random Fields (CRFs) are one of the core technologies in computer vision, and have been ...
Abstract. Conditional Random Fields (CRFs) are widely known to scale poorly, particularly for tasks ...