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A Semi-Supervised Two-Stage Approach to Learning from Noisy Labels
v1v2v3 (latest)

A Semi-Supervised Two-Stage Approach to Learning from Noisy Labels

8 February 2018
Yifan Ding
Liqiang Wang
Deliang Fan
Boqing Gong
    NoLa
ArXiv (abs)PDFHTML

Papers citing "A Semi-Supervised Two-Stage Approach to Learning from Noisy Labels"

50 / 50 papers shown
Title
Imbalanced Medical Image Segmentation with Pixel-dependent Noisy Labels
Imbalanced Medical Image Segmentation with Pixel-dependent Noisy Labels
Erjian Guo
Zicheng Wang
Zhen Zhao
Luping Zhou
NoLa
170
1
0
12 Jan 2025
SURE: SUrvey REcipes for building reliable and robust deep networks
SURE: SUrvey REcipes for building reliable and robust deep networks
Yuting Li
Yingyi Chen
Xuanlong Yu
Dexiong Chen
Xi Shen
UQCVOOD
85
4
0
01 Mar 2024
Class Prototype-based Cleaner for Label Noise Learning
Class Prototype-based Cleaner for Label Noise Learning
Jingjia Huang
Yuanqi Chen
Jiashi Feng
Xinglong Wu
NoLaSSL
57
0
0
21 Dec 2022
SplitNet: Learnable Clean-Noisy Label Splitting for Learning with Noisy
  Labels
SplitNet: Learnable Clean-Noisy Label Splitting for Learning with Noisy Labels
Daehwan Kim
Kwang-seok Ryoo
Hansang Cho
Seung Wook Kim
NoLa
84
4
0
20 Nov 2022
SelfMix: Robust Learning Against Textual Label Noise with Self-Mixup
  Training
SelfMix: Robust Learning Against Textual Label Noise with Self-Mixup Training
Dan Qiao
Chenchen Dai
Yuyang Ding
Juntao Li
Qiang Chen
Wenliang Chen
Hao Fei
VLMNoLa
78
10
0
10 Oct 2022
Jigsaw-ViT: Learning Jigsaw Puzzles in Vision Transformer
Jigsaw-ViT: Learning Jigsaw Puzzles in Vision Transformer
Yingyi Chen
Xiaoke Shen
Yahui Liu
Qinghua Tao
Johan A. K. Suykens
AAMLViT
85
24
0
25 Jul 2022
Compressing Features for Learning with Noisy Labels
Compressing Features for Learning with Noisy Labels
Yingyi Chen
S. Hu
Xin Shen
C. Ai
Johan A. K. Suykens
NoLa
73
14
0
27 Jun 2022
Deep Learning with Label Noise: A Hierarchical Approach
Deep Learning with Label Noise: A Hierarchical Approach
Li-Wei Chen
Ningyuan Huang
Cong Mu
Hayden S. Helm
Kate Lytvynets
Weiwei Yang
Carey E. Priebe
NoLa
77
1
0
28 May 2022
Robust Medical Image Classification from Noisy Labeled Data with Global
  and Local Representation Guided Co-training
Robust Medical Image Classification from Noisy Labeled Data with Global and Local Representation Guided Co-training
Cheng Xue
Lequan Yu
Pengfei Chen
Qi Dou
Pheng-Ann Heng
NoLa
66
54
0
10 May 2022
UNICON: Combating Label Noise Through Uniform Selection and Contrastive
  Learning
UNICON: Combating Label Noise Through Uniform Selection and Contrastive Learning
Nazmul Karim
Mamshad Nayeem Rizve
Nazanin Rahnavard
Ajmal Mian
M. Shah
NoLa
91
100
0
28 Mar 2022
Semantic Clustering based Deduction Learning for Image Recognition and
  Classification
Semantic Clustering based Deduction Learning for Image Recognition and Classification
Wenchi Ma
Xuemin Tu
Bo Luo
Guanghui Wang
81
29
0
25 Dec 2021
Two Wrongs Don't Make a Right: Combating Confirmation Bias in Learning
  with Label Noise
Two Wrongs Don't Make a Right: Combating Confirmation Bias in Learning with Label Noise
Mingcai Chen
Hao Cheng
Yuntao Du
Ming Xu
Wenyu Jiang
Chongjun Wang
NoLa
73
26
0
06 Dec 2021
Open-Vocabulary Instance Segmentation via Robust Cross-Modal
  Pseudo-Labeling
Open-Vocabulary Instance Segmentation via Robust Cross-Modal Pseudo-Labeling
Dat T. Huynh
Jason Kuen
Zhe Lin
Jiuxiang Gu
Ehsan Elhamifar
ISegVLM
109
86
0
24 Nov 2021
Addressing out-of-distribution label noise in webly-labelled data
Addressing out-of-distribution label noise in webly-labelled data
Paul Albert
Diego Ortego
Eric Arazo
Noel E. O'Connor
Kevin McGuinness
NoLa
60
18
0
26 Oct 2021
PropMix: Hard Sample Filtering and Proportional MixUp for Learning with
  Noisy Labels
PropMix: Hard Sample Filtering and Proportional MixUp for Learning with Noisy Labels
F. Cordeiro
Vasileios Belagiannis
Ian Reid
G. Carneiro
NoLa
73
18
0
22 Oct 2021
Label Cleaning Multiple Instance Learning: Refining Coarse Annotations
  on Single Whole-Slide Images
Label Cleaning Multiple Instance Learning: Refining Coarse Annotations on Single Whole-Slide Images
Zhenzhen Wang
Carla Saoud
A. Popel
Aaron W. James
Aleksander S. Popel
Jeremias Sulam
87
23
0
22 Sep 2021
Learning Fast Sample Re-weighting Without Reward Data
Learning Fast Sample Re-weighting Without Reward Data
Zizhao Zhang
Tomas Pfister
80
76
0
07 Sep 2021
Co-learning: Learning from Noisy Labels with Self-supervision
Co-learning: Learning from Noisy Labels with Self-supervision
Cheng Tan
Jun Xia
Lirong Wu
Stan Z. Li
NoLa
133
127
0
05 Aug 2021
Training Classifiers that are Universally Robust to All Label Noise
  Levels
Training Classifiers that are Universally Robust to All Label Noise Levels
Jingyi Xu
Tony Q.S. Quek
Kai Fong Ernest Chong
NoLa
58
2
0
27 May 2021
Generation and Analysis of Feature-Dependent Pseudo Noise for Training
  Deep Neural Networks
Generation and Analysis of Feature-Dependent Pseudo Noise for Training Deep Neural Networks
Sree Ram Kamabattula
Kumudha Musini
Babak Namazi
G. Sankaranarayanan
V. Devarajan
NoLa
18
0
0
22 May 2021
Boosting Semi-Supervised Face Recognition with Noise Robustness
Boosting Semi-Supervised Face Recognition with Noise Robustness
Yuchi Liu
Hailin Shi
Hang Du
Rui Zhu
Jun Wang
Liang Zheng
Tao Mei
NoLa
52
19
0
10 May 2021
Boosting Co-teaching with Compression Regularization for Label Noise
Boosting Co-teaching with Compression Regularization for Label Noise
Yingyi Chen
Xin Shen
S. Hu
Johan A. K. Suykens
NoLa
83
47
0
28 Apr 2021
Joint Negative and Positive Learning for Noisy Labels
Joint Negative and Positive Learning for Noisy Labels
Youngdong Kim
Juseung Yun
Hyounguk Shon
Junmo Kim
NoLa
76
63
0
14 Apr 2021
Industry Scale Semi-Supervised Learning for Natural Language
  Understanding
Industry Scale Semi-Supervised Learning for Natural Language Understanding
Luoxin Chen
Francisco Garcia
Varun Kumar
He Xie
Jianhua Lu
38
7
0
29 Mar 2021
Co-matching: Combating Noisy Labels by Augmentation Anchoring
Co-matching: Combating Noisy Labels by Augmentation Anchoring
Yangdi Lu
Yang Bo
Wenbo He
NoLa
50
7
0
23 Mar 2021
On the Robustness of Monte Carlo Dropout Trained with Noisy Labels
On the Robustness of Monte Carlo Dropout Trained with Noisy Labels
Purvi Goel
Li Chen
NoLa
72
15
0
22 Mar 2021
ScanMix: Learning from Severe Label Noise via Semantic Clustering and
  Semi-Supervised Learning
ScanMix: Learning from Severe Label Noise via Semantic Clustering and Semi-Supervised Learning
Ragav Sachdeva
F. Cordeiro
Vasileios Belagiannis
Ian Reid
G. Carneiro
106
34
0
21 Mar 2021
LongReMix: Robust Learning with High Confidence Samples in a Noisy Label
  Environment
LongReMix: Robust Learning with High Confidence Samples in a Noisy Label Environment
F. Cordeiro
Ragav Sachdeva
Vasileios Belagiannis
Ian Reid
G. Carneiro
NoLa
77
80
0
06 Mar 2021
DST: Data Selection and joint Training for Learning with Noisy Labels
DST: Data Selection and joint Training for Learning with Noisy Labels
Yi Wei
Xue Mei
Xin Liu
Pengxiang Xu
NoLa
57
3
0
01 Mar 2021
How Does a Neural Network's Architecture Impact Its Robustness to Noisy
  Labels?
How Does a Neural Network's Architecture Impact Its Robustness to Noisy Labels?
Jingling Li
Mozhi Zhang
Keyulu Xu
John P. Dickerson
Jimmy Ba
OODNoLa
105
19
0
23 Dec 2020
Multi-Objective Interpolation Training for Robustness to Label Noise
Multi-Objective Interpolation Training for Robustness to Label Noise
Diego Ortego
Eric Arazo
Paul Albert
Noel E. O'Connor
Kevin McGuinness
NoLa
81
117
0
08 Dec 2020
SemiNLL: A Framework of Noisy-Label Learning by Semi-Supervised Learning
SemiNLL: A Framework of Noisy-Label Learning by Semi-Supervised Learning
Zhuowei Wang
Jing Jiang
Bo Han
Lei Feng
Bo An
Gang Niu
Guodong Long
NoLa
81
17
0
02 Dec 2020
Using Under-trained Deep Ensembles to Learn Under Extreme Label Noise
Using Under-trained Deep Ensembles to Learn Under Extreme Label Noise
K. Nikolaidis
T. Plagemann
Stein Kristiansen
V. Goebel
Mohan Kankanhalli
NoLaUQCV
78
3
0
23 Sep 2020
Reliable Label Bootstrapping for Semi-Supervised Learning
Reliable Label Bootstrapping for Semi-Supervised Learning
Paul Albert
Diego Ortego
Eric Arazo
Noel E. O'Connor
Kevin McGuinness
SSL
73
5
0
23 Jul 2020
Improving Object Detection with Selective Self-supervised Self-training
Improving Object Detection with Selective Self-supervised Self-training
Yandong Li
Di Huang
Danfeng Qin
Liqiang Wang
Boqing Gong
124
65
0
17 Jul 2020
Learning from Noisy Labels with Deep Neural Networks: A Survey
Learning from Noisy Labels with Deep Neural Networks: A Survey
Hwanjun Song
Minseok Kim
Dongmin Park
Yooju Shin
Jae-Gil Lee
NoLa
136
1,009
0
16 Jul 2020
Meta Soft Label Generation for Noisy Labels
Meta Soft Label Generation for Noisy Labels
G. Algan
ilkay Ulusoy
NoLa
86
38
0
11 Jul 2020
An Overview of Deep Semi-Supervised Learning
An Overview of Deep Semi-Supervised Learning
Yassine Ouali
C´eline Hudelot
Myriam Tami
SSLHAI
134
303
0
09 Jun 2020
Self-Learning with Rectification Strategy for Human Parsing
Self-Learning with Rectification Strategy for Human Parsing
Tao Li
Zhiyuan Liang
Sanyuan Zhao
Jiahao Gong
Jianbing Shen
74
35
0
17 Apr 2020
No Regret Sample Selection with Noisy Labels
No Regret Sample Selection with Noisy Labels
H. Song
N. Mitsuo
S. Uchida
D. Suehiro
NoLa
58
5
0
06 Mar 2020
DivideMix: Learning with Noisy Labels as Semi-supervised Learning
DivideMix: Learning with Noisy Labels as Semi-supervised Learning
Junnan Li
R. Socher
Guosheng Lin
NoLa
139
1,036
0
18 Feb 2020
Towards Robust Learning with Different Label Noise Distributions
Towards Robust Learning with Different Label Noise Distributions
Diego Ortego
Eric Arazo
Paul Albert
Noel E. O'Connor
Kevin McGuinness
NoLa
55
25
0
18 Dec 2019
Image Classification with Deep Learning in the Presence of Noisy Labels:
  A Survey
Image Classification with Deep Learning in the Presence of Noisy Labels: A Survey
G. Algan
ilkay Ulusoy
NoLaVLM
96
334
0
11 Dec 2019
Deep learning with noisy labels: exploring techniques and remedies in
  medical image analysis
Deep learning with noisy labels: exploring techniques and remedies in medical image analysis
Davood Karimi
Haoran Dou
Simon K. Warfield
Ali Gholipour
NoLa
133
552
0
05 Dec 2019
Distilling Effective Supervision from Severe Label Noise
Distilling Effective Supervision from Severe Label Noise
Zizhao Zhang
Han Zhang
Sercan O. Arik
Honglak Lee
Tomas Pfister
NoLa
39
2
0
01 Oct 2019
NLNL: Negative Learning for Noisy Labels
NLNL: Negative Learning for Noisy Labels
Youngdong Kim
Junho Yim
Juseung Yun
Junmo Kim
NoLa
63
277
0
19 Aug 2019
Deep Self-Learning From Noisy Labels
Deep Self-Learning From Noisy Labels
Jiangfan Han
Ping Luo
Xiaogang Wang
NoLa
98
282
0
06 Aug 2019
Unsupervised Label Noise Modeling and Loss Correction
Unsupervised Label Noise Modeling and Loss Correction
Eric Arazo Sanchez
Diego Ortego
Paul Albert
Noel E. O'Connor
Kevin McGuinness
NoLa
149
618
0
25 Apr 2019
A Large RGB-D Dataset for Semi-supervised Monocular Depth Estimation
A Large RGB-D Dataset for Semi-supervised Monocular Depth Estimation
Jaehoon Cho
Dongbo Min
Youngjung Kim
Kwanghoon Sohn
MDE3DV
139
48
0
23 Apr 2019
An Entropic Optimal Transport Loss for Learning Deep Neural Networks
  under Label Noise in Remote Sensing Images
An Entropic Optimal Transport Loss for Learning Deep Neural Networks under Label Noise in Remote Sensing Images
B. Damodaran
Rémi Flamary
Vivien Seguy
Nicolas Courty
NoLa
70
40
0
02 Oct 2018
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