Feature Transformation Ensemble Model with Batch Spectral Regularization for Cross-Domain Few-Shot Classification
About
In this paper, we propose a feature transformation ensemble model with batch spectral regularization for the Cross-domain few-shot learning (CD-FSL) challenge. Specifically, we proposes to construct an ensemble prediction model by performing diverse feature transformations after a feature extraction network. On each branch prediction network of the model we use a batch spectral regularization term to suppress the singular values of the feature matrix during pre-training to improve the generalization ability of the model. The proposed model can then be fine tuned in the target domain to address few-shot classification. We also further apply label propagation, entropy minimization and data augmentation to mitigate the shortage of labeled data in target domains. Experiments are conducted on a number of CD-FSL benchmark tasks with four target domains and the results demonstrate the superiority of our proposed model.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Cross-domain few-shot classification | CD-FSL benchmark | Mean Accuracy78.8 | 33 | |
| 5-way 5-shot Few-Shot Classification | BSCD-FSL Suite (ChestX, ISIC, EuroSAT, CropDisease, CUB, Cars, Places, Plantae) 1.0 (test) | ChestX Acc26.84 | 15 |