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Boosting the Generalization Capability in Cross-Domain Few-shot Learning via Noise-enhanced Supervised Autoencoder

About

State of the art (SOTA) few-shot learning (FSL) methods suffer significant performance drop in the presence of domain differences between source and target datasets. The strong discrimination ability on the source dataset does not necessarily translate to high classification accuracy on the target dataset. In this work, we address this cross-domain few-shot learning (CDFSL) problem by boosting the generalization capability of the model. Specifically, we teach the model to capture broader variations of the feature distributions with a novel noise-enhanced supervised autoencoder (NSAE). NSAE trains the model by jointly reconstructing inputs and predicting the labels of inputs as well as their reconstructed pairs. Theoretical analysis based on intra-class correlation (ICC) shows that the feature embeddings learned from NSAE have stronger discrimination and generalization abilities in the target domain. We also take advantage of NSAE structure and propose a two-step fine-tuning procedure that achieves better adaption and improves classification performance in the target domain. Extensive experiments and ablation studies are conducted to demonstrate the effectiveness of the proposed method. Experimental results show that our proposed method consistently outperforms SOTA methods under various conditions.

Hanwen Liang, Qiong Zhang, Peng Dai, Juwei Lu• 2021

Related benchmarks

TaskDatasetResultRank
Few-shot classificationEuroSAT
Accuracy83.96
98
5-way Few-shot ClassificationCUB--
95
Few-shot classificationPlaces
Accuracy71.02
67
5-way Few-shot ClassificationCars
Accuracy54.91
58
5-way Few-shot ClassificationChestX
Accuracy27.1
37
5-way Few-shot ClassificationPlantae
Accuracy59.55
37
5-way Few-shot ClassificationCrop Diseases
Accuracy93.14
37
5-way Few-shot Image ClassificationISIC
Accuracy54.05
31
5-way 5-shot Few-Shot ClassificationBSCD-FSL Suite (ChestX, ISIC, EuroSAT, CropDisease, CUB, Cars, Places, Plantae) 1.0 (test)
ChestX Acc27.1
30
Domain Adaptive Few-Shot Open-Set RecognitionMiniImageNet to CUB
Accuracy46.33
26
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