A curated (most recent) list of resources for Learning with Noisy Labels
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Updated
Oct 18, 2024
A curated (most recent) list of resources for Learning with Noisy Labels
Code for Simultaneous Edge Alignment and Learning (SEAL)
The official implementation of the ACM MM'21 paper Co-learning: Learning from noisy labels with self-supervision.
[ICML2022 Long Talk] Official Pytorch implementation of "To Smooth or Not? When Label Smoothing Meets Noisy Labels"
Official implementation of the ECCV2022 paper: Learn From All: Erasing Attention Consistency for Noisy Label Facial Expression Recognition
Twin Contrastive Learning with Noisy Labels (CVPR 2023)
[ICLR2021] Official Pytorch implementation of "When Optimizing f-Divergence is Robust with Label noise"
MultiWOZ 2.4: A Multi-Domain Task-Oriented Dialogue Dataset
Official implementation of our NeurIPS2021 paper: Relative Uncertainty Learning for Facial Expression Recognition
(L2ID@CVPR2021, TNNLS2022) Boosting Co-teaching with Compression Regularization for Label Noise
Official codes for ACM CIKM '22 full paper: Towards Federated Learning against Noisy Labels via Local Self-Regularization
(Pattern Recognition Letters 2023) PyTorch implementation of "Jigsaw-ViT: Learning Jigsaw Puzzles in Vision Transformer"
NeurIPS 2021, "Fine Samples for Learning with Noisy Labels"
Q. Yao, H. Yang, B. Han, G. Niu, J. Kwok. Searching to Exploit Memorization Effect in Learning from Noisy Labels. ICML 2020
[ICML'2022] Estimating Instance-dependent Bayes-label Transition Matrix using a Deep Neural Network
[AAAI 2025] MonoBox: Tightness-free Box-supervised Polyp Segmentation using Monotonicity Constraint
Official codes for ACM CIKM '24 full paper: Tackling Noisy Clients in Federated Learning with End-to-end Label Correction
[cvpr2023] implementation of out-of-candidate rectification methods
Official codes for FNBench: Benchmarking Robust Federated Learning against Noisy Labels
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