Glstylenet: Exquisite Style Transfer Combining Global And Local Pyramid Features

IET COMPUTER VISION(2020)

引用 14|浏览26
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摘要
Recent studies using deep neural networks have shown remarkable success in style transfer, especially for artistic and photo-realistic images. However, these methods cannot solve more sophisticated problems. The approaches using global statistics fail to capture small, intricate textures and maintain correct texture scales of the artworks, and the others based on local patches are defective on global effect. To address these issues, this study presents a unified model [global and local style network (GLStyleNet)] to achieve exquisite style transfer with higher quality. Specifically, a simple yet effective perceptual loss is proposed to consider the information of global semantic-level structure, local patch-level style, and global channel-level effect at the same time. This could help transfer not just large-scale, obvious style cues but also subtle, exquisite ones, and dramatically improve the quality of style transfer. Besides, the authors introduce a novel deep pyramid feature fusion module to provide a more flexible style expression and a more efficient transfer process. This could help retain both high-frequency pixel information and low-frequency construct information. They demonstrate the effectiveness and superiority of their approach on numerous style transfer tasks, especially the Chinese ancient painting style transfer. Experimental results indicate that their unified approach improves image style transfer quality over previous state-of-the-art methods.
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关键词
feature extraction,image texture,image representation,art,realistic images,neural nets,image colour analysis,image fusion,GLStyleNet,exquisite style transfer,global pyramid features,local pyramid features,deep neural networks,photo‐realistic images,intricate textures,local patches,global semantic‐level structure,local patch‐level style,global channel‐level effect,flexible style expression,Chinese ancient painting style transfer,image style,deep pyramid feature fusion module,high‐frequency pixel information,low‐frequency construct information
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