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# Learning from Noisy Labels with Distillation #
- Author: Yuncheng Li, Jianchao Yang, Yale Song, Liangliang Cao, Jiebo Luo, Jia Li
- Origin: [https://arxiv.org/abs/1703.02391v1](https://arxiv.org…
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- https://arxiv.org/abs/2103.02130
- 2021
実世界のデータセットでは、不完全なラベルがいたるところに存在しています。
ラベルノイズに強いディープニューラルネットワーク(DNN)を学習するための最近の成功した手法は、次の2つの主要なテクニックを使用している。
すなわち、ウォームアップ段階で損失に基づいてサンプルをフィルタリングし、きれいなラベルを持…
e4exp updated
3 years ago
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Thanks for maintaining the list of papers on long-tailed learning!
Our work : **SURE: SUrvey REcipes for building reliable and robust deep networks**[CVPR2024] addressed long-tailed distribution in …
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### Description
I really like the concept behind the regex example in [Example](https://espanso.org/docs/matches/examples/) but feel like it leads to unnecessary clutter in the search UI, I'd like to…
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Dear author:
Thanks for your contributions to noisy label learning. Now, I am trying to reimplement your work on segmentation task. However, it seems that the ''Models.Unetplpl_2D import NestedUNet''…
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* http://ruder.io/semi-supervised/
* [Training Deep Neural Networks on Noisy Labels with Bootstrapping](https://arxiv.org/abs/1412.6596)
* [Training Convolutional Networks with Noisy Labels](https:…
dmarx updated
6 years ago
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datasetname: Cloth1M
path:/data3/Cloth1M/
size: downloading
homepage: https://github.com/Cysu/noisy_label
Miscellaneous: images, ground true labels and noisy labels
applicant: qizhouwang_4047
…
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ICCV 2023: SILT: Shadow-Aware Iterative Label Tuning for Learning to Detect Shadows from Noisy Labels (A refined SBU test set)
TIP 2021: Revisiting Shadow Detection: A New Benchmark Dataset for Comp…
xw-hu updated
6 months ago
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# 2D UNet for label-free prediction of mCherry-H2B
Bioimage.io -- an AI model repository for deep learning.
[https://bioimage.io/?tags=noisy-hedgehog&id=10.5281%2Fzenodo.8064806&type=model](https://…
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https://github.com/YinengWang/Supervised-Image-Classification-with-Noisy-Labels-Using-Deep-Learning/blob/6c61b62a0a43d2116774c0bd42704b1637ba1b57/datasets.py#L90-L92