Atanbori, John and Rose, Samuel (2022) MergedNET: A simple approach for one-shot learning in siamese networks based on similarity layers. Neurocomputing, 509 . pp. 1-10. ISSN 0925-2312
Full content URL: https://doi.org/10.1016/j.neucom.2022.08.070
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1-s2.0-S0925231222010529-main.pdf - Whole Document Available under License Creative Commons Attribution 4.0 International. 2MB |
Item Type: | Article |
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Item Status: | Live Archive |
Abstract
Classifiers trained on disjointed classes with few labelled data points are used in one-shot learning to identify visual concepts from other classes. Recently, Siamese networks and similarity layers have been used to solve the one-shot learning problem, achieving state-of-the-art performance on visual-character recognition datasets. Various techniques have been developed over the years to improve the performance of these networks on fine-grained image classification datasets. They focused primarily on improving the loss and activation functions, augmenting visual features, employing multiscale metric learning, and pre-training and fine-tuning the backbone network. We investigate similarity layers for one-shot learning tasks and propose two frameworks for combining these layers into a MergedNet network. On all four datasets used in our experiment, MergedNet outperformed the baselines based on classification accuracy, and it generalises to other datasets when trained on miniImageNet.
Keywords: | Convolutional Neural Networks (CNN), Similarity layers, Siamese networks, One-shot learning, Few-shot learning |
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Subjects: | G Mathematical and Computer Sciences > G400 Computer Science |
Divisions: | College of Science |
ID Code: | 50524 |
Deposited On: | 21 Sep 2022 13:36 |
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