The field of texture synthesis has witnessed important progresses over the last years, most notably through the use of Convolutional Neural Networks. However, neural synthesis methods still struggle to reproduce large scale structures, especially with high resolution textures. To address this issue, we first introduce a simple multi-resolution framework that efficiently accounts for long-range dependency. Then, we show that additional statistical constraints further improve the reproduction of textures with strong regularity. This can be achieved by constraining both the Gram matrices of a neural network and the power spectrum of the image. Alternatively one may constrain only the autocorrelation of the features of the network and drop the Gram matrices constraints. In an experimental part, the proposed methods are then extensively tested and compared to alternative approaches, both in an unsupervised way and through a user study. Experiments show the interest of the multi-scale scheme for high resolution textures and the interest of combining it with additional constraints for regular textures.
High resolution neural texture synthesis with long range constraints
A multi-resolution framework with statistical feature constraints improves neural texture synthesis, particularly for high-resolution and regular textures.
- Year
- 2020
- Venue
- arXiv 2020
- Authors
- 3
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2008.01808ARXIV-DEFAULT
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