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Multi-scale Relation Network for Few-Shot Learning Based on Meta-learning

机译:基于元学习的少量学习多尺度关系网络

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Deep neural networks can learn a huge function space, because they have millions of parameters to fit large amounts of labeled data. However, this advantage is a major obstacle for few-shot learning, because which has to make predictions based on only few samples of each class. In this work, inspired by multi-scale features methods and relation network which uses neural network to learn metrics, we propose a concise and efficient network, multi-scale relation network. The network consists of a feature extractor and a metric learner. Firstly, the feature extractor extracts multi-scale features by combining features from different convolutional layers. Secondly, we generate the relation feature by calculating the absolute value of the difference between multi-scale features. The results on benchmark sets show that our method avoids the over fitting and elongates the period of learning process, providing higher performance with simple design choices.
机译:深度神经网络可以学习巨大的功能空间,因为它们具有数百万个参数以适合大量标记数据。但是,此优势是少打学习的主要障碍,因为该学习必须基于每个类别的少量样本进行预测。在这项工作中,受多尺度特征方法和使用神经网络学习度量的关系网络的启发,我们提出了一种简洁高效的网络,多尺度关系网络。该网络由特征提取器和度量学习器组成。首先,特征提取器通过组合来自不同卷积层的特征来提取多尺度特征。其次,我们通过计算多尺度特征之间的差异的绝对值来生成关系特征。基准集上的结果表明,我们的方法避免了过度拟合并延长了学习过程的时间,从而通过简单的设计选择提供了更高的性能。

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