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One-Shot Learning in Discriminative Neural Networks

18 July 2017
Jordan Burgess
J. Lloyd
Zoubin Ghahramani
    BDL
    VLM
    UQCV
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Abstract

We consider the task of one-shot learning of visual categories. In this paper we explore a Bayesian procedure for updating a pretrained convnet to classify a novel image category for which data is limited. We decompose this convnet into a fixed feature extractor and softmax classifier. We assume that the target weights for the new task come from the same distribution as the pretrained softmax weights, which we model as a multivariate Gaussian. By using this as a prior for the new weights, we demonstrate competitive performance with state-of-the-art methods whilst also being consistent with ñormal' methods for training deep networks on large data.

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