Publication | Open Access
Texture Networks: Feed-forward Synthesis of Textures and Stylized Images
605
Citations
15
References
2016
Year
Image AnalysisMachine LearningEngineeringGenerative Adversarial NetworkSingle Texture ExampleTexture NetworksGenerative ModelsComputational ImagingStyle TransferDeep NetworksHuman Image SynthesisGenerative AiDeep LearningBeautiful TexturesComputer VisionSynthetic Image Generation
Gatys et al. recently demonstrated that deep networks can generate beautiful textures and stylized images from a single texture example. However, their methods requires a slow and memory-consuming optimization process. We propose here an alternative approach that moves the computational burden to a learning stage. Given a single example of a texture, our approach trains compact feed-forward convolutional networks to generate multiple samples of the same texture of arbitrary size and to transfer artistic style from a given image to any other image. The resulting networks are remarkably light-weight and can generate textures of quality comparable to Gatys~et~al., but hundreds of times faster. More generally, our approach highlights the power and flexibility of generative feed-forward models trained with complex and expressive loss functions.
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