On Minimum Discrepancy Estimation for Deep Domain Adaptation
About
In the presence of large sets of labeled data, Deep Learning (DL) has accomplished extraordinary triumphs in the avenue of computer vision, particularly in object classification and recognition tasks. However, DL cannot always perform well when the training and testing images come from different distributions or in the presence of domain shift between training and testing images. They also suffer in the absence of labeled input data. Domain adaptation (DA) methods have been proposed to make up the poor performance due to domain shift. In this paper, we present a new unsupervised deep domain adaptation method based on the alignment of second order statistics (covariances) as well as maximum mean discrepancy of the source and target data with a two stream Convolutional Neural Network (CNN). We demonstrate the ability of the proposed approach to achieve state-of the-art performance for image classification on three benchmark domain adaptation datasets: Office-31 [27], Office-Home [37] and Office-Caltech [8].
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Unsupervised Domain Adaptation | Office-Home (test) | Average Accuracy48 | 332 | |
| Sleep Stage Classification | SHHS-2 SHHS-1 (test) | Accuracy77.45 | 22 | |
| Sleep Stage Classification | SHHS Sleep-EDF 2 (test) | Accuracy70.82 | 22 | |
| Sleep Stage Classification | Sleep-EDF to SHHS-1 cross-dataset | Macro F1 Score65.78 | 22 | |
| Sleep Stage Classification | Sleep-EDFX from SHHS | Macro F152.17 | 17 | |
| Sleep Stage Classification | SHHS1 (test) | Accuracy68.15 | 15 | |
| Sleep Stage Classification | Cross-Dataset Suite (Sleep-EDF, SHHS-1, SHHS-2) Combined (test) | Average Accuracy71.91 | 11 | |
| Sleep Stage Classification | SHHS-1 to SHHS-2 (cross-dataset) | Macro F1 Score57.34 | 11 | |
| Sleep Stage Classification | SHHS-2 to Sleep-EDF (cross-dataset) | Macro F1 Score61.13 | 11 | |
| Sleep Stage Classification | SHHS-2 to SHHS-1 (cross-dataset) | Macro F1 Score65.13 | 11 |