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Learning Across Domains and Devices: Style-Driven Source-Free Domain Adaptation in Clustered Federated Learning

About

Federated Learning (FL) has recently emerged as a possible way to tackle the domain shift in real-world Semantic Segmentation (SS) without compromising the private nature of the collected data. However, most of the existing works on FL unrealistically assume labeled data in the remote clients. Here we propose a novel task (FFREEDA) in which the clients' data is unlabeled and the server accesses a source labeled dataset for pre-training only. To solve FFREEDA, we propose LADD, which leverages the knowledge of the pre-trained model by employing self-supervision with ad-hoc regularization techniques for local training and introducing a novel federated clustered aggregation scheme based on the clients' style. Our experiments show that our algorithm is able to efficiently tackle the new task outperforming existing approaches. The code is available at https://github.com/Erosinho13/LADD.

Donald Shenaj, Eros Fan\`i, Marco Toldo, Debora Caldarola, Antonio Tavera, Umberto Michieli, Marco Ciccone, Pietro Zanuttigh, Barbara Caputo• 2022

Related benchmarks

TaskDatasetResultRank
Image ClassificationOffice-31
Average Accuracy84.78
261
Image ClassificationDomainNet (test)
Average Accuracy64.84
209
Image ClassificationOffice-Home (test)
Mean Accuracy63.52
199
Image ClassificationOffice-Home
Average Accuracy60.92
142
Image ClassificationOffice-31 (test)
Avg Accuracy79.31
93
Image ClassificationDomainNet
Average Accuracy46.21
58
Image ClassificationOffice-31 Amazon domain (test)
Accuracy70.6
20
Image ClassificationDomainNet
Accuracy (Q->C)52.72
13
Image ClassificationOffice-31 DSLR domain (test)
Accuracy99.4
8
Image ClassificationOffice-Home Art-Source (sub-table a)
Accuracy (A->C)37.5
8
Showing 10 of 10 rows

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