4.6 Article

Image Neural Style Transfer With Global and Local Optimization Fusion

Journal

IEEE ACCESS
Volume 7, Issue -, Pages 85573-85580

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2019.2922554

Keywords

Deep neural networks; style transfer; Markov random field; gram matrix; local patch

Funding

  1. National Natural Science Foundation of China [61503128, 61772179]
  2. Science and Technology Plan Project of Hunan Province [2016TP1020]
  3. Scientific Research Fund of Hunan Provincial Education Department [16C0226, 17C0223, 18A333]
  4. Hengyang Guided Science and Technology Projects and Application-Oriented Special Disciplines [Hengkefa [2018]60-31]
  5. Double First-Class University Project of Hunan Province [Xiangjiaotong [2018]469]
  6. Hunan Province Special Funds of Central Government for Guiding Local Science and Technology Development [2018CT5001]
  7. Subject Group Construction Project of Hengyang Normal University [18XKQ02]

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This paper presents a new image synthesis method for image style transfer. For some common methods, the textures and colors in the style image are sometimes applied inappropriately to the content image, which generates artifacts. In order to improve the results, we propose a novel method based on a new strategy that combines both local and global style losses. On the one hand, a style loss function based on a local approach is used to keep the style details. On the other hand, another style loss function based on global measures is used to capture more global structural information. The results on various images show that the proposed method reduces artifacts while faithfully transferring the style image's characteristics and preserving the structure and color of the content image.

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