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首页> 外文期刊>Journal of visual communication & image representation >Meta-transfer-adjustment learning for few-shot learning
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Meta-transfer-adjustment learning for few-shot learning

机译:用于小样本学习的元迁移调整学习

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Deep neural network models with strong feature extraction capacity are prone to overfitting and fail to adapt quickly to new tasks with few samples. Gradient-based meta-learning approaches can minimize overfitting and adapt to new tasks fast, but they frequently use shallow neural networks with limited feature extraction capacity. We present a simple and effective approach called Meta-Transfer-Adjustment learning (MTA) in this paper, which enables deep neural networks with powerful feature extraction capabilities to be applied to few -shot scenarios while avoiding overfitting and gaining the capacity for quickly adapting to new tasks via training on numerous tasks. Our presented approach is classified into two major parts, the Feature Adjustment (FA) module, and the Task Adjustment (TA) module. The feature adjustment module (FA) helps the model to make better use of the deep network to improve feature extraction, while the task adjustment module (TA) is utilized for further improve the model's fast response and generalization capabilities. The proposed model delivers good classification results on the benchmark small sample datasets MiniImageNet and Fewshot-CIFAR100, as proved experimentally.
机译:特征提取能力强的深度神经网络模型容易出现过拟合,样本量少,无法快速适应新任务。基于梯度的元学习方法可以最大限度地减少过拟合并快速适应新任务,但它们经常使用特征提取能力有限的浅层神经网络。本文提出了一种简单有效的方法,称为元迁移调整学习(MTA),该方法使具有强大特征提取能力的深度神经网络能够应用于少数场景,同时避免过拟合,并通过对大量任务的训练获得快速适应新任务的能力。我们提出的方法分为两个主要部分,特征调整 (FA) 模块和任务调整 (TA) 模块。特征调整模块(FA)帮助模型更好地利用深度网络提高特征提取能力,而任务调整模块(TA)则用于进一步提高模型的快速响应和泛化能力。实验证明,所提出的模型在基准小样本数据集MiniImageNet和Fewshot-CIFAR100上提供了良好的分类结果。

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