Transcription of Semantic Segmentation With Generative Models: Semi ...
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Semantic Segmentation with Generative Models: Semi-Supervised Learning and Strong Out-of-Domain GeneralizationDaiqing Li1*Junlin Yang1,3 Karsten Kreis1 Antonio Torralba4 Sanja Fidler1,2,51 NVIDIA2 University of Toronto3 Yale University4 MIT5 Vector InstituteAbstractTraining deep networks with limited labeled data whileachieving a strong generalization ability is key in the questto reduce human annotation efforts. This is the goal ofsemi-supervised learning, which exploits more widely avail-able unlabeled data to complement small labeled data this paper, we propose a novel framework for discrim-inative pixel-level tasks using a Generative model of bothimages and labels.
Semantic Segmentation with Generative Models: Semi-Supervised Learning and Strong Out-of-Domain Generalization Daiqing Li1* Junlin Yang1,3 Karsten Kreis1 Antonio Torralba4 Sanja Fidler1,2,5 1 NVIDIA 2 University of Toronto 3 Yale University 4 MIT 5 Vector Institute Abstract Training deep networks with limited labeled data while
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