Few-shot learning with noisy labels
Few-shot learning (FSL) methods typically assume clean support sets with accurately
labeled samples when training on novel classes. This assumption can often be unrealistic …
labeled samples when training on novel classes. This assumption can often be unrealistic …
Deta: Denoised task adaptation for few-shot learning
Test-time task adaptation in few-shot learning aims to adapt a pre-trained task-agnostic
model for capturing task-specific knowledge of the test task, rely only on few-labeled support …
model for capturing task-specific knowledge of the test task, rely only on few-labeled support …
From instance to metric calibration: A unified framework for open-world few-shot learning
Robust few-shot learning (RFSL), which aims to address noisy labels in few-shot learning,
has recently gained considerable attention. Existing RFSL methods are based on the …
has recently gained considerable attention. Existing RFSL methods are based on the …
Blessing few-shot segmentation via semi-supervised learning with noisy support images
Mainstream few-shot segmentation methods meet performance bottleneck due to the data
scarcity of novel classes with insufficient intra-class variations, which results in a biased …
scarcity of novel classes with insufficient intra-class variations, which results in a biased …
APPN: An Attention-based Pseudo-label Propagation Network for few-shot learning with noisy labels
Few-shot learning has garnered significant attention in deep learning as an effective
approach for addressing the issue of data scarcity. Conventionally, training datasets in few …
approach for addressing the issue of data scarcity. Conventionally, training datasets in few …
[PDF][PDF] Learning to Learn from Corrupted Data for Few-Shot Learning.
Few-shot learning which aims to generalize knowledge learned from annotated base
training data to recognize unseen novel classes has attracted considerable attention …
training data to recognize unseen novel classes has attracted considerable attention …
Boosting and rectifying few-shot learning prototype network for skin lesion classification based on the internet of medical things
J **ao, H Xu, DK Fang, C Cheng, HH Gao - Wireless Networks, 2023 - Springer
Abstract The Internet of Medical Things (IoMT), with advances in wireless technologies, has
boosted traditional healthcare into smart healthcare. Computer-aided diagnosis technology …
boosted traditional healthcare into smart healthcare. Computer-aided diagnosis technology …
Towards Few-Shot Learning in the Open World: A Review and Beyond
Human intelligence is characterized by our ability to absorb and apply knowledge from the
world around us, especially in rapidly acquiring new concepts from minimal examples …
world around us, especially in rapidly acquiring new concepts from minimal examples …
Towards Robust Few-shot Point Cloud Semantic Segmentation
Few-shot point cloud semantic segmentation aims to train a model to quickly adapt to new
unseen classes with only a handful of support set samples. However, the noise-free …
unseen classes with only a handful of support set samples. However, the noise-free …
Optimal Transport of Diverse Unsupervised Tasks for Robust Learning from Noisy Few-Shot Data
Noisy few-shot learning (NFSL) presents novel challenges primarily due to the interplay
between noisy labels and limited training data. While data cleansing offers a viable solution …
between noisy labels and limited training data. While data cleansing offers a viable solution …