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Zero-Shot Text-to-Image Generation

Aditya Ramesh, Mikhail Pavlov, Gabriel Goh, Scott Gray, Chelsea Voss, Alec Radford, Mark Chen, Ilya Sutskever

2021International Conference on Machine Learning20 citations

Abstract

Text-to-image generation has traditionally focused on finding better modeling assumptions for training on a fixed dataset. These assumptions might involve complex architectures, auxiliary losses, or side information such as object part labels or segmentation masks supplied during training. We describe a simple approach for this task based on a transformer that autoregressively models the text and image tokens as a single stream of data. With sufficient data and scale, our approach is competitive with previous domain-specific models when evaluated in a zero-shot fashion.

Topics & Concepts

Computer scienceTransformerImage (mathematics)Artificial intelligenceSegmentationZero (linguistics)Image segmentationTask (project management)Training setPattern recognition (psychology)Computer visionManagementPhysicsVoltageLinguisticsEconomicsQuantum mechanicsPhilosophyMultimodal Machine Learning ApplicationsGenerative Adversarial Networks and Image SynthesisHandwritten Text Recognition Techniques
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