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Few-shot Classifier GAN

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conference contribution
posted on 2024-09-27, 14:59 authored by Adamu Ali-Gombe, Eyad Elyan, Yann Savoye, Chrisina Jayne

Fine-grained image classification with a few-shot classifier is a highly challenging open problem at the core of a numerous data labeling applications. In this paper, we present Few-shot Classifier Generative Adversarial Network as an approach for few-shot classification. We address the problem of few-shot classification by designing a GAN model in which the discriminator and the generator compete to output labeled data in any case. In contrast to previous methods, our techniques generate then classify images into multiple fake or real classes. A key innovation of our adversarial approach is to allow fine- grained classification using multiple fake classes with semi- supervised deep learning. A major strength of our techniques lies in its label-agnostic characteristic, in the sense that the system handles both labeled and unlabeled data during training. We validate quantitatively our few-shot classifier on the MNIST and SVHN datasets by varying the ratio of labeled data over unlabeled data in the training set. Our quantitative analysis demonstrates that our techniques produce better classification performance when using multiple fake classes and larger amount of unlabelled data.

History

Author affiliation

College of Science & Engineering Comp' & Math' Sciences

Source

2018 International Joint Conference on Neural Networks (IJCNN)

Version

  • AM (Accepted Manuscript)

Published in

2018 International Joint Conference on Neural Networks (IJCNN)

Publisher

IEEE

Copyright date

2018

Available date

2024-09-27

Temporal coverage: start date

2018-07-08

Temporal coverage: end date

2018-07-13

Language

en

Deposited by

Dr Yann Savoye

Deposit date

2024-09-23

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