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Domain Impression: A Source Data Free Domain Adaptation Method

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Unsupervised Domain adaptation methods solve the adaptation problem for an unlabeled target set, assuming that the source dataset is available with all labels. However, the availability of actual source samples is not always possible in practical cases. It could be due to memory constraints, privacy concerns, and challenges in sharing data. This practical scenario creates a bottleneck in the domain adaptation problem. This paper addresses this challenging scenario by proposing a domain adaptation technique that does not need any source data. Instead of the source data, we are only provided with a classifier that is trained on the source data. Our proposed approach is based on a generative framework, where the trained classifier is used for generating samples from the source classes. We learn the joint distribution of data by using the energy-based modeling of the trained classifier. At the same time, a new classifier is also adapted for the target domain. We perform various ablation analysis under different experimental setups and demonstrate that the proposed approach achieves better results than the baseline models in this extremely novel scenario.

Vinod K Kurmi, Venkatesh K Subramanian, Vinay P Namboodiri• 2021

Related benchmarks

TaskDatasetResultRank
Medical Image SegmentationKvasir-SEG (test)
mIoU84.01
78
Medical Image SegmentationISIC (test)
IoU0.7423
55
Robotic Image SegmentationOCID
mIoU87.68
27
Robotic Image SegmentationOSD
mIoU88.19
27
Camouflaged Object SegmentationChameleon
mIoU (box)71.91
9
Camouflaged Object SegmentationCOD10K
mIoU (box)71.42
9
Camouflaged Object SegmentationCAMO
mIoU (box)71.25
9
Instance SegmentationPascal VOC (test)
AP (Box)80.12
9
Instance SegmentationCOCO-C
mIoU (Brit)76.21
9
Instance SegmentationCOCO 2017 (test)
AP (Box)77.29
9
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