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DeepJDOT: Deep Joint Distribution Optimal Transport for Unsupervised Domain Adaptation

About

In computer vision, one is often confronted with problems of domain shifts, which occur when one applies a classifier trained on a source dataset to target data sharing similar characteristics (e.g. same classes), but also different latent data structures (e.g. different acquisition conditions). In such a situation, the model will perform poorly on the new data, since the classifier is specialized to recognize visual cues specific to the source domain. In this work we explore a solution, named DeepJDOT, to tackle this problem: through a measure of discrepancy on joint deep representations/labels based on optimal transport, we not only learn new data representations aligned between the source and target domain, but also simultaneously preserve the discriminative information used by the classifier. We applied DeepJDOT to a series of visual recognition tasks, where it compares favorably against state-of-the-art deep domain adaptation methods.

Bharath Bhushan Damodaran, Benjamin Kellenberger, R\'emi Flamary, Devis Tuia, Nicolas Courty• 2018

Related benchmarks

TaskDatasetResultRank
Image ClassificationOffice-Home
Average Accuracy50.67
142
Unsupervised Domain AdaptationOffice-31
A->W Accuracy88.9
83
Image ClassificationVisDA 2017 (test)
Class Accuracy (Plane)85.4
83
Digit ClassificationMNIST -> USPS (test)
Accuracy98.5
65
Digit ClassificationUSPS → MNIST target (test)
Accuracy96.4
58
Digit ClassificationSVHN → MNIST target (test)
Accuracy96.7
37
Domain Adaptation ClassificationMNIST to USPS
Accuracy95.7
26
Domain Adaptation ClassificationSVHN to MNIST
Accuracy96.7
25
Domain Adaptation ClassificationUSPS to MNIST
Accuracy96.4
23
Digit ClassificationMNIST -> MNIST-M (target test)
Accuracy97.8
11
Showing 10 of 10 rows

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