Within modern Deep Learning setups, data augmentation is the weapon of choice when dealing with narrow datasets or with a poor range of different samples. However, the benefits of data augmentation are abysmal when applied to a dataset which is inherently unable to cover all the categories to be classified with a significant number of samples. To deal with such desperate scenarios, we propose a possible last resort: Cross-Dataset Data Augmentation. That is, the creation of new samples by morphing observations from a different source into credible specimens for the training dataset. Of course specific and strict conditions must be satisfied for this trick to work. In this paper we propose a general set of strategies and rules for Cross-Datas...
Deep Learning for embedded vision requires large datasets. Indeed the more varied training data is, ...
In the last decade, motivated by the success of Deep Learning, the scientific community proposed sev...
Deep learning enables automatically discovering useful, multistage, task-specific features from high...
Within modern Deep Learning setups, data augmentation is the weapon of choice when dealing with narr...
In the recent years deep learning has become more and more popular and it is applied in a variety o...
Data augmentation has become a standard step to improve the predictive power and robustness of convo...
Deep artificial neural networks require a large corpus of training data in order to effectively lear...
Nowadays, deep learning has achieved remarkable results in many computer vision related tasks, among...
When the training data is inadequate, it is difficult to train a deep Convolutional Neural Network (...
The presence of a bias in each image data collection has recently attracted a lot of attention in th...
To ensure good performance, modern machine learning models typically require large amounts of qualit...
Deep Convolutional Neural Networks (ConvNets) have been tremendously successful in the field of comp...
During the last few years, deep learning achieved remarkable results in the field of machine learnin...
Data augmentation is an essential part of the training process applied to deep learning models. The ...
A problem with convolutional neural networks (CNNs) is that they require large datasets to obtain ad...
Deep Learning for embedded vision requires large datasets. Indeed the more varied training data is, ...
In the last decade, motivated by the success of Deep Learning, the scientific community proposed sev...
Deep learning enables automatically discovering useful, multistage, task-specific features from high...
Within modern Deep Learning setups, data augmentation is the weapon of choice when dealing with narr...
In the recent years deep learning has become more and more popular and it is applied in a variety o...
Data augmentation has become a standard step to improve the predictive power and robustness of convo...
Deep artificial neural networks require a large corpus of training data in order to effectively lear...
Nowadays, deep learning has achieved remarkable results in many computer vision related tasks, among...
When the training data is inadequate, it is difficult to train a deep Convolutional Neural Network (...
The presence of a bias in each image data collection has recently attracted a lot of attention in th...
To ensure good performance, modern machine learning models typically require large amounts of qualit...
Deep Convolutional Neural Networks (ConvNets) have been tremendously successful in the field of comp...
During the last few years, deep learning achieved remarkable results in the field of machine learnin...
Data augmentation is an essential part of the training process applied to deep learning models. The ...
A problem with convolutional neural networks (CNNs) is that they require large datasets to obtain ad...
Deep Learning for embedded vision requires large datasets. Indeed the more varied training data is, ...
In the last decade, motivated by the success of Deep Learning, the scientific community proposed sev...
Deep learning enables automatically discovering useful, multistage, task-specific features from high...