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Papers/A Broader Study of Cross-Domain Few-Shot Learning

A Broader Study of Cross-Domain Few-Shot Learning

Yunhui Guo, Noel C. Codella, Leonid Karlinsky, James V. Codella, John R. Smith, Kate Saenko, Tajana Rosing, Rogerio Feris

2019-12-16ECCV 2020 8Few-Shot LearningMeta-LearningTransfer LearningFew-Shot Image ClassificationCross-Domain Few-Shotcross-domain few-shot learning
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Abstract

Recent progress on few-shot learning largely relies on annotated data for meta-learning: base classes sampled from the same domain as the novel classes. However, in many applications, collecting data for meta-learning is infeasible or impossible. This leads to the cross-domain few-shot learning problem, where there is a large shift between base and novel class domains. While investigations of the cross-domain few-shot scenario exist, these works are limited to natural images that still contain a high degree of visual similarity. No work yet exists that examines few-shot learning across different imaging methods seen in real world scenarios, such as aerial and medical imaging. In this paper, we propose the Broader Study of Cross-Domain Few-Shot Learning (BSCD-FSL) benchmark, consisting of image data from a diverse assortment of image acquisition methods. This includes natural images, such as crop disease images, but additionally those that present with an increasing dissimilarity to natural images, such as satellite images, dermatology images, and radiology images. Extensive experiments on the proposed benchmark are performed to evaluate state-of-art meta-learning approaches, transfer learning approaches, and newer methods for cross-domain few-shot learning. The results demonstrate that state-of-art meta-learning methods are surprisingly outperformed by earlier meta-learning approaches, and all meta-learning methods underperform in relation to simple fine-tuning by 12.8% average accuracy. Performance gains previously observed with methods specialized for cross-domain few-shot learning vanish in this more challenging benchmark. Finally, accuracy of all methods tend to correlate with dataset similarity to natural images, verifying the value of the benchmark to better represent the diversity of data seen in practice and guiding future research.

Results

TaskDatasetMetricValueModel
Few-Shot LearningChestX5 shot25.97BSCD-FSL
Few-Shot LearningPlantae5 shot59.27BSCD-FSL
Few-Shot Learningcars5 shot52.08BSCD-FSL
Few-Shot LearningEuroSAT5 shot79.08BSCD-FSL
Few-Shot LearningCUB5 shot64.14BSCD-FSL
Few-Shot LearningISIC20185 shot48.11BSCD-FSL
Few-Shot LearningPlaces5 shot70.06BSCD-FSL
Few-Shot LearningCropDisease5 shot89.25BSCD-FSL
Meta-LearningChestX5 shot25.97BSCD-FSL
Meta-LearningPlantae5 shot59.27BSCD-FSL
Meta-Learningcars5 shot52.08BSCD-FSL
Meta-LearningEuroSAT5 shot79.08BSCD-FSL
Meta-LearningCUB5 shot64.14BSCD-FSL
Meta-LearningISIC20185 shot48.11BSCD-FSL
Meta-LearningPlaces5 shot70.06BSCD-FSL
Meta-LearningCropDisease5 shot89.25BSCD-FSL
Cross-Domain Few-ShotChestX5 shot25.97BSCD-FSL
Cross-Domain Few-ShotPlantae5 shot59.27BSCD-FSL
Cross-Domain Few-Shotcars5 shot52.08BSCD-FSL
Cross-Domain Few-ShotEuroSAT5 shot79.08BSCD-FSL
Cross-Domain Few-ShotCUB5 shot64.14BSCD-FSL
Cross-Domain Few-ShotISIC20185 shot48.11BSCD-FSL
Cross-Domain Few-ShotPlaces5 shot70.06BSCD-FSL
Cross-Domain Few-ShotCropDisease5 shot89.25BSCD-FSL

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