One-Shot Learning Using Triplet Network with kNN Classifier

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Abstract

This is an extension from a selected paper from JSAI2019. Humans have the ability to learn new things correctly without requiring large amount of data, while it is a challenging task in AI, which is called few-shot Learning or one-shot learning. Our key insight is using data augmentation technique to enlarge our dataset, then feeding them into a Triplet Network which is to collect same categories and separate the different. We have compared different augmentation methods, and we confirm that CVAE(Conditional VAE) can make sense as data augmentation method to slove one-shot classification problems.

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Zhou, M., Tanimura, Y., & Nakada, H. (2020). One-Shot Learning Using Triplet Network with kNN Classifier. In Advances in Intelligent Systems and Computing (Vol. 1128 AISC, pp. 227–235). Springer. https://doi.org/10.1007/978-3-030-39878-1_21

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