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Image Style Transfer Based on Deep Feature Rotation and Adaptive Instance Normalization | IEEE Conference Publication | IEEE Xplore

Image Style Transfer Based on Deep Feature Rotation and Adaptive Instance Normalization


Abstract:

Style transfer is an attractive point in recent years. This tech needs an image to provide its style, and a neural network is applied to transfer the style onto a content...Show More

Abstract:

Style transfer is an attractive point in recent years. This tech needs an image to provide its style, and a neural network is applied to transfer the style onto a content target. Most of the existing methods aim to obtain the weight parameters by training on a single image feature and continuously optimizing the network structure to improve the computational efficiency and image quality, but these methods only consider the image features from a certain perspective, which may lead to some information loss. In this paper, we add Deep Feature Rotation (DFR) to the AdaIN network, which enables us to generate multiple features from one image feature by rotation and train these features synthetically. By this method, we can perform comprehensive feature extraction on a stylized image to preserve more complete feature information. We have tried different combinations of angles and also compared them with other methods. The code is available at https://github.com/SP-FA/Style-Transfer-Based-on-DFR-and-AdaIN
Date of Conference: 17-19 October 2023
Date Added to IEEE Xplore: 21 December 2023
ISBN Information:
Conference Location: Zakopane, Poland
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