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2020-12-11
Lee, P., Tseng, C..  2019.  On the Layer Choice of the Image Style Transfer Using Convolutional Neural Networks. 2019 IEEE International Conference on Consumer Electronics - Taiwan (ICCE-TW). :1—2.

In this paper, the layer choices of the image style transfer method using the VGG-19 neural network are studied. The VGG-19 network is used to extract the feature maps which have their implicit meaning as a learning basis. If the layers for stylistic learning are not suitably chosen, the quality of style transferred image may not look good. After making experiments, it can be observed that the color information is concentrated on lower layers from conv1-1 to conv2-2, and texture information is concentrated on the middle layers from conv3-1 to conv4-4. As to the higher layers from conv5-1 to conv5-4, they seem to be able to depict image content well. Based on these observations, the methods of color transfer, texture transfer and style transfer are presented and make comparisons with conventional methods.

2018-11-19
Shinya, A., Tung, N. D., Harada, T., Thawonmas, R..  2017.  Object-Specific Style Transfer Based on Feature Map Selection Using CNNs. 2017 Nicograph International (NicoInt). :88–88.

We propose a method for transferring an arbitrary style to only a specific object in an image. Style transfer is the process of combining the content of an image and the style of another image into a new image. Our results show that the proposed method can realize style transfer to specific object.