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Unifying Unsupervised Domain Adaptation and Zero-Shot Visual Recognition

Unifying Unsupervised Domain Adaptation and Zero-Shot Visual Recognition

25 March 2019
Qian Wang
Penghui Bu
T. Breckon
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Papers citing "Unifying Unsupervised Domain Adaptation and Zero-Shot Visual Recognition"

7 / 7 papers shown
Title
On Fine-Tuned Deep Features for Unsupervised Domain Adaptation
On Fine-Tuned Deep Features for Unsupervised Domain Adaptation
Qian Wang
T. Breckon
30
3
0
25 Oct 2022
Progressively Select and Reject Pseudo-labelled Samples for Open-Set
  Domain Adaptation
Progressively Select and Reject Pseudo-labelled Samples for Open-Set Domain Adaptation
Qian Wang
Fanlin Meng
T. Breckon
VLM
BDL
20
21
0
25 Oct 2021
UBR$^2$S: Uncertainty-Based Resampling and Reweighting Strategy for
  Unsupervised Domain Adaptation
UBR2^22S: Uncertainty-Based Resampling and Reweighting Strategy for Unsupervised Domain Adaptation
Tobias Ringwald
Rainer Stiefelhagen
22
0
0
22 Oct 2021
Zero-Shot Day-Night Domain Adaptation with a Physics Prior
Zero-Shot Day-Night Domain Adaptation with a Physics Prior
A. Lengyel
Sourav Garg
Michael Milford
J. C. V. Gemert
39
57
0
11 Aug 2021
Selective Pseudo-Labeling with Reinforcement Learning for
  Semi-Supervised Domain Adaptation
Selective Pseudo-Labeling with Reinforcement Learning for Semi-Supervised Domain Adaptation
Bingyu Liu
Yuhong Guo
Jieping Ye
Weihong Deng
35
2
0
07 Dec 2020
Domain Adaptation by Class Centroid Matching and Local Manifold
  Self-Learning
Domain Adaptation by Class Centroid Matching and Local Manifold Self-Learning
Lei Tian
Yongqiang Tang
Liangchen Hu
Zhida Ren
Wensheng Zhang
45
62
0
20 Mar 2020
The Good, the Bad and the Ugly: Evaluating Convolutional Neural Networks
  for Prohibited Item Detection Using Real and Synthetically Composited X-ray
  Imagery
The Good, the Bad and the Ugly: Evaluating Convolutional Neural Networks for Prohibited Item Detection Using Real and Synthetically Composited X-ray Imagery
Neelanjan Bhowmik
Qian Wang
Yona Falinie A. Gaus
Marcin Szarek
T. Breckon
22
33
0
25 Sep 2019
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