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CookGAN: Causality Based Text-to-Image Synthesis

Bin Zhu, Chong‐Wah Ngo

202073 citationsDOIOpen Access PDF

Abstract

This paper addresses the problem of text-to-image synthesis from a new perspective, i.e., the cause-and-effect chain in image generation. Causality is a common phenomenon in cooking. The dish appearance changes depending on the cooking actions and ingredients. The challenge of synthesis is that a generated image should depict the visual result of action-on-object. This paper presents a new network architecture, CookGAN, that mimics visual effect in causality chain, preserves fine-grained details and progressively upsamples image. Particularly, a cooking simulator sub-network is proposed to incrementally make changes to food images based on the interaction between ingredients and cooking methods over a series of steps. Experiments on Recipe1M verify that CookGAN manages to generate food images with reasonably impressive inception score. Furthermore, the images are semantically interpretable and manipulable.

Topics & Concepts

Causality (physics)Computer scienceImage (mathematics)Perspective (graphical)Artificial intelligenceObject (grammar)Image synthesisAction (physics)Computer visionTheoretical computer sciencePhysicsQuantum mechanicsGenerative Adversarial Networks and Image SynthesisComputer Graphics and Visualization TechniquesAdvanced Image and Video Retrieval Techniques
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