Visible to the public Real-Time Arbitrary Style Transfer with Convolution Neural Network

TitleReal-Time Arbitrary Style Transfer with Convolution Neural Network
Publication TypeConference Paper
Year of Publication2019
AuthorsHuang, Y., Jing, M., Tang, H., Fan, Y., Xue, X., Zeng, X.
Conference Name2019 IEEE International Conference on Integrated Circuits, Technologies and Applications (ICTA)
Date Published Nov. 2019
PublisherIEEE
ISBN Number978-1-7281-5040-6
KeywordsASTCNN, Computer architecture, Computer vision, content feature extraction, content features, convolution, convolution neural network, convolutional neural nets, Decoding, Deep Learning, feature extraction, Metrics, Neural networks, neural style transfer, pubcrawl, real-time arbitrary style transfer convolution neural network, Real-time Systems, resilience, Resiliency, Scalability, style transfer, style transferred image, Training
Abstract

Style transfer is a research hotspot in computer vision. Up to now, it is still a challenge although many researches have been conducted on it for high quality style transfer. In this work, we propose an algorithm named ASTCNN which is a real-time Arbitrary Style Transfer Convolution Neural Network. The ASTCNN consists of two independent encoders and a decoder. The encoders respectively extract style and content features from style and content and the decoder generates the style transferred image images. Experimental results show that ASTCNN achieves higher quality output image than the state-of-the-art style transfer algorithms and the floating point computation of ASTCNN is 23.3% less than theirs.

URLhttps://ieeexplore.ieee.org/document/9012884
DOI10.1109/ICTA48799.2019.9012884
Citation Keyhuang_real-time_2019