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Domain Generalization with Domain-Specific Aggregation Modules

About

Visual recognition systems are meant to work in the real world. For this to happen, they must work robustly in any visual domain, and not only on the data used during training. Within this context, a very realistic scenario deals with domain generalization, i.e. the ability to build visual recognition algorithms able to work robustly in several visual domains, without having access to any information about target data statistic. This paper contributes to this research thread, proposing a deep architecture that maintains separated the information about the available source domains data while at the same time leveraging over generic perceptual information. We achieve this by introducing domain-specific aggregation modules that through an aggregation layer strategy are able to merge generic and specific information in an effective manner. Experiments on two different benchmark databases show the power of our approach, reaching the new state of the art in domain generalization.

Antonio D'Innocente, Barbara Caputo• 2018

Related benchmarks

TaskDatasetResultRank
Image ClassificationPACS (test)
Average Accuracy80.72
254
Domain GeneralizationVLCS
Accuracy67.03
238
Domain GeneralizationPACS (test)
Average Accuracy81.55
225
Domain GeneralizationPACS
Accuracy (Art)77.33
221
Image ClassificationOffice-Home (test)
Mean Accuracy64.7
199
Image ClassificationOffice-Home
Average Accuracy60.77
142
Multi-class classificationVLCS
Acc (Caltech)94.96
139
Image ClassificationOfficeHome
Average Accuracy60.8
131
object recognitionPACS (leave-one-domain-out)
Acc (Art painting)77.3
112
Domain GeneralizationOffice-Home (test)
Average Accuracy60.77
106
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