Improving Few-Shot Learning using Composite Rotation based Auxiliary Task

29 Jun 2020Pratik MazumderPravendra SinghVinay P. Namboodiri

In this paper, we propose an approach to improve few-shot classification performance using a composite rotation based auxiliary task. Few-shot classification methods aim to produce neural networks that perform well for classes with a large number of training samples and classes with less number of training samples... (read more)

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