Gaussian Conditional Random Field Network For Semantic Segmentation

2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR)(2016)

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摘要
In contrast to the existing approaches that use discrete Conditional Random Field (CRF) models, we propose to use a Gaussian CRF model for the task of semantic segmentation. We propose a novel deep network, which we refer to as Gaussian Mean Field (GMF) network, whose layers perform mean field inference over a Gaussian CRF. The proposed GMF network has the desired property that each of its layers produces an output that is closer to the maximum a posteriori solution of the Gaussian CRF compared to its input. By combining the proposed GMF network with deep Convolutional Neural Networks (CNNs), we propose a new end-to-end trainable Gaussian conditional random field network. The proposed Gaussian CRF network is composed of three sub-networks: (i) a CNN-based unary network for generating unary potentials, (ii) a CNN-based pairwise network for generating pairwise potentials, and (iii) a GMF network for performing Gaussian CRF inference. When trained end-to-end in a discriminative fashion, and evaluated on the challenging PASCALVOC 2012 segmentation dataset, the proposed Gaussian CRF network outperforms various recent semantic segmentation approaches that combine CNNs with discrete CRF models.
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关键词
PASCALVOC 2012 segmentation dataset,Gaussian CRF inference,pairwise potentials generation,CNN-based pairwise network,unary potential generation,CNN-based unary network,end-to-end trainable Gaussian conditional random field network,CNNs,deep convolutional neural networks,mean field inference,GMF network,Gaussian mean field,deep network network,semantic segmentation,Gaussian CRF network
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