Masked Neural Style Transfer using Convolutional Neural Networks
Title | Masked Neural Style Transfer using Convolutional Neural Networks |
Publication Type | Conference Paper |
Year of Publication | 2018 |
Authors | Handa, A., Garg, P., Khare, V. |
Conference Name | 2018 International Conference on Recent Innovations in Electrical, Electronics Communication Engineering (ICRIEECE) |
Keywords | Biological neural networks, content image, convolutional neural nets, convolutional neural networks, deep neural networks, face recognition, feature extraction, Histograms, masked neural style transfer, masking, neural style transfer, object detection, Predictive Metrics, pubcrawl, Resiliency, Scalability, Semantics, Technological innovation, VGG-19 model, visual experiences, visual perception, visual perceptions, visualization |
Abstract | In painting, humans can draw an interrelation between the style and the content of a given image in order to enhance visual experiences. Deep neural networks like convolutional neural networks are being used to draw a satisfying conclusion of this problem of neural style transfer due to their exceptional results in the key areas of visual perceptions such as object detection and face recognition.In this study, along with style transfer on whole image it is also outlined how transfer of style can be performed only on the specific parts of the content image which is accomplished by using masks. The style is transferred in a way that there is a least amount of loss to the content image i.e., semantics of the image is preserved. |
DOI | 10.1109/ICRIEECE44171.2018.9008937 |
Citation Key | handa_masked_2018 |
- feature extraction
- visualization
- visual perceptions
- visual perception
- visual experiences
- VGG-19 model
- Technological innovation
- Semantics
- object detection
- masking
- masked neural style transfer
- Histograms
- neural style transfer
- face recognition
- deep neural networks
- convolutional neural networks
- convolutional neural nets
- content image
- Biological neural networks
- pubcrawl
- Predictive Metrics
- Resiliency
- Scalability