Recent advances in transfer learning and few-shot learning largely rely on annotated data related to the goal task during (pre-)training. However, collecting sufficiently similar and annotated data is often infeasible. Building on advances in self-supervised and few-shot learning, we propose to learn a metric embedding that clusters unlabeled samples and their augmentations closely together. This pre-trained embedding serves as a starting point for classification with limited labeled goal task data by summarizing class clusters and fine-tuning. Experiments show that our approach significantly outperforms state-of the-art unsupervised meta-learning approaches, and is on par with supervised performance. In a cross-domain setting, our approach...
We propose regression networks for the problem of few-shot classification, where a classifier must g...
By transferring knowledge from the abundant labeled samples of known source classes, zero-shot learn...
Although few-shot learning and one-class classification (OCC), i.e., learning a binary classifier wi...
The focus of recent few-shot learning research has been on the development of learning methods that ...
The focus of recent few-shot learning research has been on the development of learning methods that ...
In this work, metric-based meta-learning models are proposed to learn a generic model embedding that...
International audienceIn many real-life problems, it is difficult to acquire or label large amounts ...
International audienceIn many real-life problems, it is difficult to acquire or label large amounts ...
Training a model with limited data is an essential task for machine learning and visual recognition....
Paper ID: #337International audienceFew-shot classification is a challenge in machine learning where...
Few-shot learners aim to recognize new categories given only a small number of training samples. The...
International audienceFew-shot classification aims at leveraging knowledge learned in a deep learnin...
International audienceFew-shot classification aims at leveraging knowledge learned in a deep learnin...
International audienceFew-shot classification aims at leveraging knowledge learned in a deep learnin...
International audienceFew-shot classification aims at leveraging knowledge learned in a deep learnin...
We propose regression networks for the problem of few-shot classification, where a classifier must g...
By transferring knowledge from the abundant labeled samples of known source classes, zero-shot learn...
Although few-shot learning and one-class classification (OCC), i.e., learning a binary classifier wi...
The focus of recent few-shot learning research has been on the development of learning methods that ...
The focus of recent few-shot learning research has been on the development of learning methods that ...
In this work, metric-based meta-learning models are proposed to learn a generic model embedding that...
International audienceIn many real-life problems, it is difficult to acquire or label large amounts ...
International audienceIn many real-life problems, it is difficult to acquire or label large amounts ...
Training a model with limited data is an essential task for machine learning and visual recognition....
Paper ID: #337International audienceFew-shot classification is a challenge in machine learning where...
Few-shot learners aim to recognize new categories given only a small number of training samples. The...
International audienceFew-shot classification aims at leveraging knowledge learned in a deep learnin...
International audienceFew-shot classification aims at leveraging knowledge learned in a deep learnin...
International audienceFew-shot classification aims at leveraging knowledge learned in a deep learnin...
International audienceFew-shot classification aims at leveraging knowledge learned in a deep learnin...
We propose regression networks for the problem of few-shot classification, where a classifier must g...
By transferring knowledge from the abundant labeled samples of known source classes, zero-shot learn...
Although few-shot learning and one-class classification (OCC), i.e., learning a binary classifier wi...