Publication | Open Access
SPIGAN: Privileged Adversarial Learning from Simulation
27
Citations
41
References
2018
Year
Artificial IntelligenceEngineeringMachine LearningSupervision.photo-realistic SimulatorsSimulationImage AnalysisData ScienceAdversarial Machine LearningGenerative ModelSynthetic Image GenerationMachine VisionAdversarial LearningGenerative ModelsComputer ScienceHuman Image SynthesisDeep LearningComputer VisionGenerative Adversarial NetworkDomain Adaptation
Deep Learning for Computer Vision depends mainly on the source of supervision.Photo-realistic simulators can generate large-scale automatically labeled syntheticdata, but introduce a domain gap negatively impacting performance. We propose anew unsupervised domain adaptation algorithm, called SPIGAN, relying on Sim-ulator Privileged Information (PI) and Generative Adversarial Networks (GAN).We use internal data from the simulator as PI during the training of a target tasknetwork. We experimentally evaluate our approach on semantic segmentation. Wetrain the networks on real-world Cityscapes and Vistas datasets, using only unla-beled real-world images and synthetic labeled data with z-buffer (depth) PI fromthe SYNTHIA dataset. Our method improves over no adaptation and state-of-the-art unsupervised domain adaptation techniques.
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