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One-Shot Identification with Different Neural Network Approaches

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Convolutional neural networks (CNNs) have been widely used in the computer vision community, significantly improving the state-of-the-art. But learning good features often is computationally expensive in machine learning settings and is especially difficult when there is a lack of data. One-shot learning is one such area where only limited data is available. In one-shot learning, predictions have to be made after seeing only one example from one class, which requires special techniques. In this paper we explore different approaches to one-shot identification tasks in different domains including an industrial application and face recognition. We use a special technique with stacked images and use siamese capsule networks. It is encouraging to see that the approach using capsule architecture achieves strong results and exceeds other techniques on a wide range of datasets from industrial application to face recognition benchmarks while being easy to use and optimise.

Janis Mohr, J\"org Frochte• 2026

Related benchmarks

TaskDatasetResultRank
Image ClassificationSmallnorb
Top-1 Acc98.4
15
Face RecognitionAT&T faces (test)
Accuracy90.2
3
IdentificationIndustrial Dataset
Accuracy97.9
3
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