Cross-domain few-shot learning (CD-FSL), where there are few target samples under extreme differences between source and target domains, has recently attracted huge attention. Recent studies on CD-FSL generally focus on transfer learning based approaches, where a neural network is pre-trained on popular labeled source domain datasets and then transferred to target domain data. Although the labeled datasets may provide suitable initial parameters for the target data, the domain difference between the source and target might hinder fine-tuning on the target domain. This paper proposes a simple yet powerful method that re-randomizes the parameters fitted on the source domain before adapting to the target data. The re-randomization resets sourc...
In this paper, we propose a study of the cross-domain few-shot object detection (CD-FSOD) benchmark,...
Most existing works on few-shot object detection (FSOD) focus on a setting where both pre-training a...
Despite impressive progress in deep learning, generalizing far beyond the training distribution is a...
Cross-domain few-shot learning (CD-FSL) has drawn increasing attention for handling large difference...
Cross-domain few-shot classification (CD-FSC) aims to identify novel target classes with a few sampl...
The goal of Cross-Domain Few-Shot Classification (CDFSC) is to accurately classify a target dataset ...
We present an empirical evaluation of machine learning algorithms in cross-domain few-shot learning ...
In recent works, utilizing a deep network trained on meta-training set serves as a strong baseline i...
Cross-domain few-shot learning has many practical applications. This paper attempts to shed light on...
Labeling social-media data for custom dimensions of toxicity and social bias is challenging and labo...
In recent works, utilizing a deep network trained on meta-training set serves as a strong baseline i...
Cross-domain few-shot meta-learning (CDFSML) addresses learning problems where knowledge needs to be...
Few-shot image generation (FSIG) aims to learn to generate new and diverse images given few (e.g., 1...
Few-shot segmentation (FSS) expects models trained on base classes to work on novel classes with the...
The goal of few-shot learning is to learn a classifier that can recognize unseen classes from limite...
In this paper, we propose a study of the cross-domain few-shot object detection (CD-FSOD) benchmark,...
Most existing works on few-shot object detection (FSOD) focus on a setting where both pre-training a...
Despite impressive progress in deep learning, generalizing far beyond the training distribution is a...
Cross-domain few-shot learning (CD-FSL) has drawn increasing attention for handling large difference...
Cross-domain few-shot classification (CD-FSC) aims to identify novel target classes with a few sampl...
The goal of Cross-Domain Few-Shot Classification (CDFSC) is to accurately classify a target dataset ...
We present an empirical evaluation of machine learning algorithms in cross-domain few-shot learning ...
In recent works, utilizing a deep network trained on meta-training set serves as a strong baseline i...
Cross-domain few-shot learning has many practical applications. This paper attempts to shed light on...
Labeling social-media data for custom dimensions of toxicity and social bias is challenging and labo...
In recent works, utilizing a deep network trained on meta-training set serves as a strong baseline i...
Cross-domain few-shot meta-learning (CDFSML) addresses learning problems where knowledge needs to be...
Few-shot image generation (FSIG) aims to learn to generate new and diverse images given few (e.g., 1...
Few-shot segmentation (FSS) expects models trained on base classes to work on novel classes with the...
The goal of few-shot learning is to learn a classifier that can recognize unseen classes from limite...
In this paper, we propose a study of the cross-domain few-shot object detection (CD-FSOD) benchmark,...
Most existing works on few-shot object detection (FSOD) focus on a setting where both pre-training a...
Despite impressive progress in deep learning, generalizing far beyond the training distribution is a...