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Transposer: Universal Texture Synthesis Using Feature Maps as Transposed Convolution Filter (2007.07243v1)

Published 14 Jul 2020 in cs.CV and cs.GR

Abstract: Conventional CNNs for texture synthesis consist of a sequence of (de)-convolution and up/down-sampling layers, where each layer operates locally and lacks the ability to capture the long-term structural dependency required by texture synthesis. Thus, they often simply enlarge the input texture, rather than perform reasonable synthesis. As a compromise, many recent methods sacrifice generalizability by training and testing on the same single (or fixed set of) texture image(s), resulting in huge re-training time costs for unseen images. In this work, based on the discovery that the assembling/stitching operation in traditional texture synthesis is analogous to a transposed convolution operation, we propose a novel way of using transposed convolution operation. Specifically, we directly treat the whole encoded feature map of the input texture as transposed convolution filters and the features' self-similarity map, which captures the auto-correlation information, as input to the transposed convolution. Such a design allows our framework, once trained, to be generalizable to perform synthesis of unseen textures with a single forward pass in nearly real-time. Our method achieves state-of-the-art texture synthesis quality based on various metrics. While self-similarity helps preserve the input textures' regular structural patterns, our framework can also take random noise maps for irregular input textures instead of self-similarity maps as transposed convolution inputs. It allows to get more diverse results as well as generate arbitrarily large texture outputs by directly sampling large noise maps in a single pass as well.

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Authors (9)
  1. Guilin Liu (78 papers)
  2. Rohan Taori (14 papers)
  3. Ting-Chun Wang (26 papers)
  4. Zhiding Yu (94 papers)
  5. Shiqiu Liu (3 papers)
  6. Fitsum A. Reda (8 papers)
  7. Karan Sapra (13 papers)
  8. Andrew Tao (40 papers)
  9. Bryan Catanzaro (123 papers)
Citations (15)