Flexible Selecting of Style to Content Ratio in Neural Style Transfer
Title | Flexible Selecting of Style to Content Ratio in Neural Style Transfer |
Publication Type | Conference Paper |
Year of Publication | 2018 |
Authors | Jeong, T., Mandal, A. |
Conference Name | 2018 17th IEEE International Conference on Machine Learning and Applications (ICMLA) |
Keywords | ART, artificial intelligence, content ratio, convolution, convolution neural networks, convolutional neural nets, convolutional neural networks, feature extraction, feature selection, Image color analysis, image texture, learning (artificial intelligence), Neural networks, neural style transfer, Optimization, Predictive Metrics, pubcrawl, Resiliency, Scalability, style image selection, style transfer, texture synthesis, user defined style weight ratio, weight ratio selection |
Abstract | Humans have created many pioneers of art from the beginning of time. There are not many notable achievements by an artificial intelligence to create something visually captivating in the field of art. However, some breakthroughs were made in the past few years by learning the differences between the content and style of an image using convolution neural networks and texture synthesis. But most of the approaches have the limitations on either processing time, choosing a certain style image or altering the weight ratio of style image. Therefore, we are to address these restrictions and provide a system which allows any style image selection with a user defined style weight ratio in minimum time possible. |
DOI | 10.1109/ICMLA.2018.00046 |
Citation Key | jeong_flexible_2018 |
- learning (artificial intelligence)
- weight ratio selection
- user defined style weight ratio
- texture synthesis
- style transfer
- style image selection
- Scalability
- Resiliency
- Predictive Metrics
- optimization
- neural style transfer
- Neural networks
- pubcrawl
- image texture
- Image color analysis
- Feature Selection
- feature extraction
- convolutional neural networks
- convolutional neural nets
- convolution neural networks
- convolution
- content ratio
- Artificial Intelligence
- ART