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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Behavior regularized prototypical networks for semi-supervised few-shot image classification
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Behavior regularized prototypical networks for semi-supervised few-shot image classification

机译:用于半监控少量图像分类的行为正则化原型网络

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摘要

We propose a Behavior Regularized Prototypical Network (BR-ProtoNet) for few-shot image classification in semi-supervised scenarios. To learn a generalizable metric, we exploit readily-available unlabeled data and construct complementary constraints to regularize the model's behavior. Specifically, we match the label spaces between each episode and the whole training set. The predictions on the unlabeled data over different episodes can be aggregated to capture more reliable category information. We further construct new instances via adversarial perturbation and interpolation. These instances regularize the model's behavior over the neighborhoods of the original ones and along the interpolation paths among them. In addition, they ensure the learnt embedding space possesses the property of proximity preservation. The regularization of these aspects is incorporated into the optimization process of BR-ProtoNet on partially labeled data. We have conducted thorough experiments on multiple challenging benchmarks. The results suggest that the metric learning can significantly benefit from the proposed regularization, and thus leading to the state-of-the-art performance in semi-supervised few-shot image classification. (c) 2020 Elsevier Ltd. All rights reserved.
机译:我们提出了一种行为正则化原型网络(BR ProtoNet),用于半监督场景中的少镜头图像分类。为了学习一个可推广的度量,我们利用现成的未标记数据并构造互补约束来规范模型的行为。具体来说,我们匹配每一集和整个训练集之间的标签空间。可以对不同事件中未标记数据的预测进行聚合,以捕获更可靠的类别信息。我们进一步通过对抗性扰动和插值构造新实例。这些实例规范了模型在原始实例的邻域上以及它们之间的插值路径上的行为。此外,它们还保证了学习到的嵌入空间具有邻近保持的特性。这些方面的正则化被纳入部分标记数据的BR协议的优化过程中。我们在多个具有挑战性的基准上进行了彻底的实验。结果表明,度量学习可以显著受益于所提出的正则化,从而在半监督少镜头图像分类中获得最先进的性能。(c) 2020爱思唯尔有限公司版权所有。

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