Different Techniques in Neural Style Transfer-A Review

Author(s):  
Kumarapu Jayaram ◽  
Malhaar Telang ◽  
Ravula Bharath Chandra Reddy ◽  
Yada Arun Kumar ◽  
Kore Shivanagendra Babu ◽  
...  
Keyword(s):  
2019 ◽  
Author(s):  
Utsav Krishnan ◽  
Akshal Sharma ◽  
Pratik Chattopadhyay

Author(s):  
Xide Xia ◽  
Tianfan Xue ◽  
Wei-sheng Lai ◽  
Zheng Sun ◽  
Abby Chang ◽  
...  
Keyword(s):  

Author(s):  
Yingying Deng ◽  
Fan Tang ◽  
Weiming Dong ◽  
Wen Sun ◽  
Feiyue Huang ◽  
...  
Keyword(s):  

2021 ◽  
pp. 1-12
Author(s):  
Mukul Kumar ◽  
Nipun Katyal ◽  
Nersisson Ruban ◽  
Elena Lyakso ◽  
A. Mary Mekala ◽  
...  

Over the years the need for differentiating various emotions from oral communication plays an important role in emotion based studies. There have been different algorithms to classify the kinds of emotion. Although there is no measure of fidelity of the emotion under consideration, which is primarily due to the reason that most of the readily available datasets that are annotated are produced by actors and not generated in real-world scenarios. Therefore, the predicted emotion lacks an important aspect called authenticity, which is whether an emotion is actual or stimulated. In this research work, we have developed a transfer learning and style transfer based hybrid convolutional neural network algorithm to classify the emotion as well as the fidelity of the emotion. The model is trained on features extracted from a dataset that contains stimulated as well as actual utterances. We have compared the developed algorithm with conventional machine learning and deep learning techniques by few metrics like accuracy, Precision, Recall and F1 score. The developed model performs much better than the conventional machine learning and deep learning models. The research aims to dive deeper into human emotion and make a model that understands it like humans do with precision, recall, F1 score values of 0.994, 0.996, 0.995 for speech authenticity and 0.992, 0.989, 0.99 for speech emotion classification respectively.


Author(s):  
Yin Xu ◽  
Yan Li ◽  
Byeong-Seok Shin

Abstract With recent advances in deep learning research, generative models have achieved great achievements and play an increasingly important role in current industrial applications. At the same time, technologies derived from generative methods are also under a wide discussion with researches, such as style transfer, image synthesis and so on. In this work, we treat generative methods as a possible solution to medical image augmentation. We proposed a context-aware generative framework, which can successfully change the gray scale of CT scans but almost without any semantic loss. By producing target images that with specific style / distribution, we greatly increased the robustness of segmentation model after adding generations into training set. Besides, we improved 2– 4% pixel segmentation accuracy over original U-NET in terms of spine segmentation. Lastly, we compared generations produced by networks when using different feature extractors (Vgg, ResNet and DenseNet) and made a detailed analysis on their performances over style transfer.


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