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Exploring Object Relation in Mean Teacher for Cross-Domain Detection

Exploring Object Relation in Mean Teacher for Cross-Domain Detection

25 April 2019
Qi Cai
Yingwei Pan
Chong-Wah Ngo
Xinmei Tian
Ling-yu Duan
Ting Yao
    ViT
    OOD
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Papers citing "Exploring Object Relation in Mean Teacher for Cross-Domain Detection"

8 / 58 papers shown
Title
Incremental Object Detection via Meta-Learning
Incremental Object Detection via Meta-Learning
K. J. Joseph
Jathushan Rajasegaran
Salman Khan
F. Khan
V. Balasubramanian
ObjD
CLL
VLM
172
98
0
17 Mar 2020
iFAN: Image-Instance Full Alignment Networks for Adaptive Object
  Detection
iFAN: Image-Instance Full Alignment Networks for Adaptive Object Detection
Chenfan Zhuang
Xintong Han
Weilin Huang
Matthew R. Scott
OOD
18
81
0
09 Mar 2020
Deep Domain Adaptive Object Detection: a Survey
Deep Domain Adaptive Object Detection: a Survey
Wanyi Li
Fuyu Li
Yongkang Luo
Peng Wang
Jia sun
ObjD
13
60
0
17 Feb 2020
SCL: Towards Accurate Domain Adaptive Object Detection via Gradient
  Detach Based Stacked Complementary Losses
SCL: Towards Accurate Domain Adaptive Object Detection via Gradient Detach Based Stacked Complementary Losses
Zhiqiang Shen
Harsh Maheshwari
Weichen Yao
Marios Savvides
ObjD
14
93
0
06 Nov 2019
Relation Distillation Networks for Video Object Detection
Relation Distillation Networks for Video Object Detection
Jiajun Deng
Yingwei Pan
Ting Yao
Wen-gang Zhou
Houqiang Li
Tao Mei
ObjD
97
191
0
26 Aug 2019
Multi-level Domain Adaptive learning for Cross-Domain Detection
Multi-level Domain Adaptive learning for Cross-Domain Detection
Rongchang Xie
Fei Yu
Jiachao Wang
Yizhou Wang
Li Zhang
ObjD
OOD
14
92
0
26 Jul 2019
There Are Many Consistent Explanations of Unlabeled Data: Why You Should
  Average
There Are Many Consistent Explanations of Unlabeled Data: Why You Should Average
Ben Athiwaratkun
Marc Finzi
Pavel Izmailov
A. Wilson
199
243
0
14 Jun 2018
Fully Convolutional Adaptation Networks for Semantic Segmentation
Fully Convolutional Adaptation Networks for Semantic Segmentation
Yiheng Zhang
Zhaofan Qiu
Ting Yao
Dong Liu
Tao Mei
SSeg
OOD
158
349
0
23 Apr 2018
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