Title
Direction-aware neural style transfer with texture enhancement.
Abstract
Neural learning methods have been shown to be effective in style transfer. These methods, which are called NST, aim to synthesize a new image that retains the high-level structure of a content image while keeps the low-level features of a style image. However, these models using convolutional structures only extract local statistical features of style images and semantic features of content images. Since the absence of low-level features in the content image, these methods would synthesize images that look unnatural and full of traces of machines. In this paper, we find that direction, that is, the orientation of each painting stroke, can capture the soul of image style preferably and thus generates much more natural and vivid stylizations. According to this observation, we propose a direction-aware neural style transfer with texture enhancement. There are four major innovations. First, we separate the style transfer method into two stage, namely, NST stage and texture enhancement stage. Second, for the NST stage, a novel direction field loss is proposed to steer the direction of strokes in the synthesized image. And to build this loss function, we propose novel direction field loss networks to generate and compare the direction fields of content image and synthesized image. By incorporating the direction field loss in neural style transfer, we obtain a new optimization objective. Through minimizing this objective, we can produce synthesized images that better follow the direction field of the content image. Third, our method provides a simple interaction mechanism to control the generated direction fields, and further control the texture direction in synthesized images. Fourth, with a texture enhancement module, our method can add vivid texture details to the synthesized image. Experiments show that our method outperforms state-of-the-art style transfer method.
Year
DOI
Venue
2019
10.1016/j.neucom.2019.08.075
Neurocomputing
Keywords
Field
DocType
Neural style transfer,Convolutional neural networks,Direction field,Texture enhancement
Neural learning,Pattern recognition,Artificial intelligence,Slope field,Mathematics
Journal
Volume
ISSN
Citations 
370
0925-2312
0
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
Hao Wu19238.83
zhengxing sun225245.27
yan zhang36720.55
qian li432.39