Few-shot learning addresses the challenge of learning how to address novel tasks given not just limited supervision but limited data as well. An attractive solution is synthetic data generation. However, most such methods are overly sophisticated, focusing on high-quality, realistic data in the input space. It is unclear whether adapting them to the few-shot regime and using them for the downstream task of classification is the right approach. Previous works on synthetic data generation for few-shot classification focus on exploiting complex models, e.g. a Wasserstein GAN with multiple regularizers or a network that transfers latent diversities from known to novel classes.We follow a different approach and investigate how a simple and strai...
Modern image classification is based upon directly predicting model classes via large discriminative...
Added experiments with different network architectures and input image resolutionsInternational audi...
Deep neural networks can be trained to create highly accurate image classification models, provided ...
CVPR 2019Training deep neural networks from few examples is a highly challenging and key problem for...
In many machine learning tasks, the available training data has a skewed distribution- a small set o...
We address the problem of few-shot classification where the goal is to learn a classifier from a lim...
Doctor of PhilosophyDepartment of Computer ScienceWilliam H HsuHumans are capable of learning a spec...
Few-shot learning focuses on learning a new visual concept with very limited labelled examples. A su...
In recent years, there has been rapid progress in computing performance and communication techniques...
Few-shot classification requires deep neural networks to learn generalized representations only from...
Fine-grained image classification with a few-shot classifier is a highly challenging open problem at...
Few-shot learning algorithms aim to learn model parameters capable of adapting to unseen classes wit...
The focus of recent few-shot learning research has been on the development of learning methods that ...
The generalization power of the pre-trained model is the key for few-shot deep learning. Dropout is ...
Fine-grained image classification with a few-shot classifier is a highly challenging open problem at...
Modern image classification is based upon directly predicting model classes via large discriminative...
Added experiments with different network architectures and input image resolutionsInternational audi...
Deep neural networks can be trained to create highly accurate image classification models, provided ...
CVPR 2019Training deep neural networks from few examples is a highly challenging and key problem for...
In many machine learning tasks, the available training data has a skewed distribution- a small set o...
We address the problem of few-shot classification where the goal is to learn a classifier from a lim...
Doctor of PhilosophyDepartment of Computer ScienceWilliam H HsuHumans are capable of learning a spec...
Few-shot learning focuses on learning a new visual concept with very limited labelled examples. A su...
In recent years, there has been rapid progress in computing performance and communication techniques...
Few-shot classification requires deep neural networks to learn generalized representations only from...
Fine-grained image classification with a few-shot classifier is a highly challenging open problem at...
Few-shot learning algorithms aim to learn model parameters capable of adapting to unseen classes wit...
The focus of recent few-shot learning research has been on the development of learning methods that ...
The generalization power of the pre-trained model is the key for few-shot deep learning. Dropout is ...
Fine-grained image classification with a few-shot classifier is a highly challenging open problem at...
Modern image classification is based upon directly predicting model classes via large discriminative...
Added experiments with different network architectures and input image resolutionsInternational audi...
Deep neural networks can be trained to create highly accurate image classification models, provided ...