Med-Noisy-Labels
Label correction library
Provides PyTorch implementation of a method to address noisy labels in medical image segmentation.
[NeurIPS 2020] Disentangling Human Error from the Ground Truth in Segmentation of Medical Images
71 stars
3 watching
16 forks
Language: Python
last commit: over 1 year ago noisy-labelssegmentation
Related projects:
Repository | Description | Stars |
---|---|---|
kthyeon/fine_official | An implementation of a method for training machine learning models using noisy labels | 38 |
xiaoboxia/t-revision | A PyTorch implementation of a method for learning with noisy labels in deep neural networks | 98 |
pokaxpoka/rognoisylabel | A Python package for robust inference via generative classifiers for handling noisy labels in machine learning. | 33 |
pxiangwu/topofilter | Develops and evaluates machine learning algorithms to mitigate the effects of noisy labels in supervised learning. | 29 |
udibr/noisy_labels | This project explores how to adapt neural networks to noisy labels by introducing a mechanism that can learn to correct the errors. | 118 |
cysu/noisy_label | A repository providing code and scripts for training image classification models on noisy labeled data | 115 |
xlearning-scu/2021-cvpr-mrl | Develops a robust learning framework to handle noisy labels in multimodal data and improve cross-modal retrieval. | 13 |
mmazeika/glc | A method to train deep learning classifiers on noisy labels using a small set of trusted data | 86 |
uds-lsv/multi-tasking_learning_with_unreliable_labels | An open source software project that extends an existing algorithm to handle noisy labels in machine learning for low-resource data generation. | 8 |
xiaoboxia/cdr | An implementation of a PyTorch-based deep learning method to improve robustness against noisy labels in image classification tasks | 75 |
nust-machine-intelligence-laboratory/jo-src | An implementation of a contrastive learning approach to address noisy labels in machine learning models | 5 |
minglllli/cbafed | A PyTorch implementation of a method for improving semi-supervised learning in federated settings by adapting pseudo labels to balance classes. | 7 |
paulalbert31/labelnoisecorrection | An implementation of an unsupervised label noise modeling and loss correction approach for deep learning. | 220 |
chenpf1025/noisy_label_understanding_utilizing | An investigation into deep learning models trained with noisy labels and methods to improve their accuracy. | 90 |
dr-darryl-wright/noisy-labels-with-bootstrapping | An implementation of training deep neural networks on noisy labels with bootstrapping using Keras | 22 |