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Disjoint Label Space Transfer Learning with Common Factorised Space

About

In this paper, a unified approach is presented to transfer learning that addresses several source and target domain label-space and annotation assumptions with a single model. It is particularly effective in handling a challenging case, where source and target label-spaces are disjoint, and outperforms alternatives in both unsupervised and semi-supervised settings. The key ingredient is a common representation termed Common Factorised Space. It is shared between source and target domains, and trained with an unsupervised factorisation loss and a graph-based loss. With a wide range of experiments, we demonstrate the flexibility, relevance and efficacy of our method, both in the challenging cases with disjoint label spaces, and in the more conventional cases such as unsupervised domain adaptation, where the source and target domains share the same label-sets.

Xiaobin Chang, Yongxin Yang, Tao Xiang, Timothy M. Hospedales• 2018

Related benchmarks

TaskDatasetResultRank
Person Re-IdentificationMarket1501 (test)
Rank-1 Accuracy61.2
1264
Person Re-IdentificationDuke MTMC-reID (test)
Rank-149.8
1018
Person Re-IdentificationMarket-1501 to DukeMTMC-reID (test)
Rank-149.8
172
Person Re-IdentificationDukeMTMC-reID to Market-1501 (test)
Rank-1 Acc61.2
119
Person Re-IdentificationDukeMTMC-reID to Market1501
mAP28.3
67
Image ClassificationSVHN to MNIST (test)
Accuracy86.5
66
Person Re-IdentificationDukeMTMC-reID Market1501 (test)
Rank-1 Acc61.2
45
Person Re-IdentificationDukeMTMC-reID Market-1501
Top-1 Acc49.8
25
Person Re-IdentificationMarket-1501 DukeMTMC-reID
Top-1 Acc61.2
25
Image CategorizationSVHN (0-4) to MNIST (5-9) (test)
Mean Classification Accuracy96.7
20
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