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Improving Augmentation Efficiency for Few-Shot Learningopen access

Authors
Cho, W.Kim, Eunwoo
Issue Date
Feb-2022
Publisher
Institute of Electrical and Electronics Engineers Inc.
Keywords
automatic search; efficient augmentation; Few-shot learning
Citation
IEEE Access, v.10, pp 17697 - 17706
Pages
10
Journal Title
IEEE Access
Volume
10
Start Page
17697
End Page
17706
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/61690
DOI
10.1109/ACCESS.2022.3151057
ISSN
2169-3536
Abstract
While human intelligence can easily recognize some characteristics of classes with one or few examples, learning from few examples is a challenging task in machine learning. Recently emerging deep learning generally requires hundreds of thousands of samples to achieve generalization ability. Despite recent advances in deep learning, it is not easy to generalize new classes with little supervision. Few-shot learning (FSL) aims to learn how to recognize new classes with few examples per class. However, learning with few examples makes the model difficult to generalize and is susceptible to overfitting. To overcome the difficulty, data augmentation techniques have been applied to FSL. It is well-known that existing data augmentation approaches rely heavily on human experts with prior knowledge to find effective augmentation strategies manually. In this work, we propose an efficient data augmentation network, called EDANet, to automatically select the most effective augmentation approaches to achieve optimal performance of few-shot learning without human intervention. Our method overcomes the disadvantages of relying on domain knowledge and requiring expensive labor to design data augmentation rules manually. We demonstrate the proposed approach on widely used FSL benchmarks (Omniglot and mini-ImageNet). Experimental results using three popular FSL networks show that ours improves performance over existing baselines through an optimal combination of candidate augmentation strategies. Author
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Kim, Eun Woo
소프트웨어대학 (소프트웨어학부)
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