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Interpolation-based semi-supervised learning for object detection

Interpolation-based semi-supervised learning for object detection

3 June 2020
Jisoo Jeong
Vikas Verma
Minsung Hyun
Arno Solin
Nojun Kwak
ArXivPDFHTML

Papers citing "Interpolation-based semi-supervised learning for object detection"

16 / 16 papers shown
Title
Mixed Pseudo Labels for Semi-Supervised Object Detection
Mixed Pseudo Labels for Semi-Supervised Object Detection
Ze-Yi Chen
Wenwei Zhang
Xinjiang Wang
Kai Chen
Zhi Wang
ObjD
40
10
0
12 Dec 2023
Refining the ONCE Benchmark with Hyperparameter Tuning
Refining the ONCE Benchmark with Hyperparameter Tuning
Maksim Golyadkin
Alexander Gambashidze
Ildar Nurgaliev
Ilya Makarov
31
1
0
10 Nov 2023
Active Teacher for Semi-Supervised Object Detection
Active Teacher for Semi-Supervised Object Detection
Peng Mi
Jianghang Lin
Yiyi Zhou
Yunhang Shen
Gen Luo
Xiaoshuai Sun
Liujuan Cao
Rongrong Fu
Qiang Xu
Rongrong Ji
52
61
0
15 Mar 2023
Semi-Supervised Object Detection with Object-wise Contrastive Learning
  and Regression Uncertainty
Semi-Supervised Object Detection with Object-wise Contrastive Learning and Regression Uncertainty
H. Choi
Zhixiang Chen
Xuepeng Shi
Tae-Kyun Kim
19
4
0
06 Dec 2022
Semi-Supervised and Unsupervised Deep Visual Learning: A Survey
Semi-Supervised and Unsupervised Deep Visual Learning: A Survey
Yanbei Chen
Massimiliano Mancini
Xiatian Zhu
Zeynep Akata
45
113
0
24 Aug 2022
Point-Teaching: Weakly Semi-Supervised Object Detection with Point
  Annotations
Point-Teaching: Weakly Semi-Supervised Object Detection with Point Annotations
Yongtao Ge
Qiang-feng Zhou
Xinlong Wang
Zhibin Wang
Hao Li
Chunhua Shen
3DPC
25
16
0
01 Jun 2022
S4OD: Semi-Supervised learning for Single-Stage Object Detection
S4OD: Semi-Supervised learning for Single-Stage Object Detection
Yueming Zhang
Xingxu Yao
Chao-Jung Liu
F. Chen
Xiaolin Song
Tengfei Xing
Runbo Hu
Hua Chai
Pengfei Xu
Guoshan Zhang
ObjD
36
7
0
09 Apr 2022
Semi-Weakly Supervised Object Detection by Sampling Pseudo Ground-Truth
  Boxes
Semi-Weakly Supervised Object Detection by Sampling Pseudo Ground-Truth Boxes
Akhil Meethal
M. Pedersoli
Zhongwen Zhu
Francisco Perdigon Romero
Eric Granger
11
4
0
01 Apr 2022
SIOD: Single Instance Annotated Per Category Per Image for Object
  Detection
SIOD: Single Instance Annotated Per Category Per Image for Object Detection
Hanjun Li
Xingjia Pan
Ke Yan
Fan Tang
Weihao Zheng
25
18
0
29 Mar 2022
CrossRectify: Leveraging Disagreement for Semi-supervised Object
  Detection
CrossRectify: Leveraging Disagreement for Semi-supervised Object Detection
Cheng Ma
Xingjia Pan
QiXiang Ye
Fan Tang
Weiming Dong
Changsheng Xu
45
14
0
26 Jan 2022
Semi-Supervised Object Detection with Adaptive Class-Rebalancing
  Self-Training
Semi-Supervised Object Detection with Adaptive Class-Rebalancing Self-Training
Fangyuan Zhang
Tianxiang Pan
Bin Wang
34
54
0
11 Jul 2021
Not All Labels Are Equal: Rationalizing The Labeling Costs for Training
  Object Detection
Not All Labels Are Equal: Rationalizing The Labeling Costs for Training Object Detection
Ismail Elezi
Zhiding Yu
Anima Anandkumar
Laura Leal-Taixe
J. Álvarez
ObjD
30
39
0
22 Jun 2021
Humble Teachers Teach Better Students for Semi-Supervised Object
  Detection
Humble Teachers Teach Better Students for Semi-Supervised Object Detection
Yihe Tang
Weifeng Chen
Yijun Luo
Yuting Zhang
36
177
0
19 Jun 2021
Instant-Teaching: An End-to-End Semi-Supervised Object Detection
  Framework
Instant-Teaching: An End-to-End Semi-Supervised Object Detection Framework
Qiang-feng Zhou
Chaohui Yu
Zhibin Wang
Qi Qian
Hao Li
ObjD
24
195
0
21 Mar 2021
Towards Domain-Agnostic Contrastive Learning
Towards Domain-Agnostic Contrastive Learning
Vikas Verma
Minh-Thang Luong
Kenji Kawaguchi
Hieu H. Pham
Quoc V. Le
SSL
15
115
0
09 Nov 2020
Mean teachers are better role models: Weight-averaged consistency
  targets improve semi-supervised deep learning results
Mean teachers are better role models: Weight-averaged consistency targets improve semi-supervised deep learning results
Antti Tarvainen
Harri Valpola
OOD
MoMe
264
1,275
0
06 Mar 2017
1