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We introduce a novel multi-scale approach for synthesizing high-resolution natural textures using convolutional neural networks trained on image classification tasks. Previous breakthroughs were based on the observation that correlations between features at intermediate layers of the network are a powerful texture representation, however the fixed receptive field of network neurons limits the maximum size of texture features that can be synthesized.
Xavier Snelgrove (Mon,) studied this question.