We introduce style augmentation, a new form of data augmentation based on random style transfer, for improving the robustness of Convolutional Neural Networks (CNN) over both classification and regression based tasks. During training, style augmentation randomizes texture, contrast and color, while preserving shape and semantic content. This is accomplished by adapting an arbitrary style transfer network to perform style randomization, by sampling target style embeddings from a multivariate normal distribution instead of computing them from a style image. In addition to standard classification experiments, we investigate the effect of style augmentation (and data augmentation generally) on domain transfer tasks. We find that dat...
Style transfer between images is an artistic application of CNNs, where the 'style' of one image is ...
Currently deep learning requires large volumes of training data to fit accurate models. In practice,...
In this work, we tackle the challenging problem of arbitrary image style transfer using a novel styl...
Due to the limitation of available labeled data, medical image segmentation is a challenging task fo...
Currently, style augmentation is capturing attention due to convolutional neural networks (CNN) bein...
Supervised training of deep neural networks requires a large amount of training data. Since labeling...
Deep artificial neural networks require a large corpus of training data in order to effectively lear...
Neural style transfer is a powerful computer vision technique that can incorporate the artistic "sty...
Deep convolutional neural networks (CNNs) have achieved remarkable results in image processing tasks...
Style transfer methods produce a transferred image which is a rendering of a content image in the ma...
Deep Convolutional Neural Networks have made an incredible progress in many Computer Vision tasks. T...
Convolutional Neural Networks and Graphics Processing Units have been at the core of a paradigm shif...
Currently deep learning requires large volumes of training data to fit accurate models. In practice,...
Abstract Large data requirements are often the main hurdle in training neural networks. Convolutiona...
Convolutional neural networks (CNN) have become the de facto standard for computer vision tasks, due...
Style transfer between images is an artistic application of CNNs, where the 'style' of one image is ...
Currently deep learning requires large volumes of training data to fit accurate models. In practice,...
In this work, we tackle the challenging problem of arbitrary image style transfer using a novel styl...
Due to the limitation of available labeled data, medical image segmentation is a challenging task fo...
Currently, style augmentation is capturing attention due to convolutional neural networks (CNN) bein...
Supervised training of deep neural networks requires a large amount of training data. Since labeling...
Deep artificial neural networks require a large corpus of training data in order to effectively lear...
Neural style transfer is a powerful computer vision technique that can incorporate the artistic "sty...
Deep convolutional neural networks (CNNs) have achieved remarkable results in image processing tasks...
Style transfer methods produce a transferred image which is a rendering of a content image in the ma...
Deep Convolutional Neural Networks have made an incredible progress in many Computer Vision tasks. T...
Convolutional Neural Networks and Graphics Processing Units have been at the core of a paradigm shif...
Currently deep learning requires large volumes of training data to fit accurate models. In practice,...
Abstract Large data requirements are often the main hurdle in training neural networks. Convolutiona...
Convolutional neural networks (CNN) have become the de facto standard for computer vision tasks, due...
Style transfer between images is an artistic application of CNNs, where the 'style' of one image is ...
Currently deep learning requires large volumes of training data to fit accurate models. In practice,...
In this work, we tackle the challenging problem of arbitrary image style transfer using a novel styl...