Publication | Closed Access
Fully-Connected CRFs with Non-Parametric Pairwise Potential
30
Citations
15
References
2013
Year
Unknown Venue
Geometric LearningEngineeringMachine LearningComputational TopologyImage AnalysisData SciencePotential TheoryPattern RecognitionGlobal AnalysisSemi-supervised LearningMachine VisionManifold LearningFeature LearningComputer ScienceDeep LearningMedical Image ComputingConditional Random FieldsComputer VisionNon-parametric Pairwise PotentialConditional Pairwise PotentialsKernel MethodGaussian Kernel
Conditional Random Fields (CRFs) are used for diverse tasks, ranging from image denoising to object recognition. For images, they are commonly defined as a graph with nodes corresponding to individual pixels and pairwise links that connect nodes to their immediate neighbors. Recent work has shown that fully-connected CRFs, where each node is connected to every other node, can be solved efficiently under the restriction that the pairwise term is a Gaussian kernel over a Euclidean feature space. In this paper, we generalize the pairwise terms to a non-linear dissimilarity measure that is not required to be a distance metric. To this end, we propose a density estimation technique to derive conditional pairwise potentials in a non-parametric manner. We then use an efficient embedding technique to estimate an approximate Euclidean feature space for these potentials, in which the pairwise term can still be expressed as a Gaussian kernel. We demonstrate that the use of non-parametric models for the pairwise interactions, conditioned on the input data, greatly increases expressive power whilst maintaining efficient inference.
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