Minimal-Entropy Correlation Alignment for Unsupervised Deep Domain Adaptation
About
In this work, we face the problem of unsupervised domain adaptation with a novel deep learning approach which leverages on our finding that entropy minimization is induced by the optimal alignment of second order statistics between source and target domains. We formally demonstrate this hypothesis and, aiming at achieving an optimal alignment in practical cases, we adopt a more principled strategy which, differently from the current Euclidean approaches, deploys alignment along geodesics. Our pipeline can be implemented by adding to the standard classification loss (on the labeled source domain), a source-to-target regularizer that is weighted in an unsupervised and data-driven fashion. We provide extensive experiments to assess the superiority of our framework on standard domain and modality adaptation benchmarks.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Domain Adaptation | SVHN to MNIST (test) | Accuracy95.2 | 53 | |
| 3D Semantic Segmentation | nuScenes Day to Night (target) | mIoU 3D68.7 | 34 | |
| 3D Semantic Segmentation | nuScenes-Lidarseg USA to Singapore target (test) | mIoU69.4 | 22 | |
| 3D Semantic Segmentation | VirtualKITTI to SemanticKITTI target (test) | mIoU47 | 22 | |
| 3D Semantic Segmentation | A2D2 to SemanticKITTI (target) | mIoU42.2 | 22 | |
| 3D Semantic Segmentation | Waymo OD SF, PHX to MTV, KRK | mIoU (2D)61.4 | 10 |