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Memory Matching Networks for One-Shot Image Recognition

机译:一键式图像识别的内存匹配网络

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In this paper, we introduce the new ideas of augmenting Convolutional Neural Networks (CNNs) with Memory and learning to learn the network parameters for the unlabelled images on the fly in one-shot learning. Specifically, we present Memory Matching Networks (MM-Net) - a novel deep architecture that explores the training procedure, following the philosophy that training and test conditions must match. Technically, MM-Net writes the features of a set of labelled images (support set) into memory and reads from memory when performing inference to holistically leverage the knowledge in the set. Meanwhile, a Contextual Learner employs the memory slots in a sequential manner to predict the parameters of CNNs for unlabelled images. The whole architecture is trained by once showing only a few examples per class and switching the learning from minibatch to minibatch, which is tailored for one-shot learning when presented with a few examples of new categories at test time. Unlike the conventional one-shot learning approaches, our MM-Net could output one unified model irrespective of the number of shots and categories. Extensive experiments are conducted on two public datasets, i.e., Omniglot and miniImageNet, and superior results are reported when compared to state-of-the-art approaches. More remarkably, our MM-Net improves one-shot accuracy on Omniglot from 98.95% to 99.28% and from 49.21% to 53.37% on miniImageNet.
机译:在本文中,我们介绍了使用记忆增强卷积神经网络(CNN)的新思想,并通过一次学习学习动态地学习了未标记图像的网络参数。具体来说,我们提出了记忆匹配网络(MM-Net)-一种新颖的深度架构,它遵循训练和测试条件必须匹配的理念来探索训练过程。从技术上讲,MM-Net将一组标记图像(支持集)的功能写入内存,并在执行推理以全面利用该集中的知识时从内存中读取。同时,上下文学习器以顺序的方式使用内存插槽来预测未标记图像的CNN参数。整个体系结构的培训是通过一次仅显示每个班级几个示例并将学习从小批量切换到小批量来进行的,当在测试时提供一些新类别的示例时,它是专为一次性学习而量身定制的。与传统的单发学习方法不同,我们的MM-Net可以输出一个统一的模型,而不管发打的数量和类别。在两个公共数据集即Omniglot和miniImageNet上进行了广泛的实验,与最先进的方法相比,报告了优异的结果。更显着的是,我们的MM-Net在Omniglot上的单次拍摄准确性从98.95%提高到99.28%,在miniImageNet上从49.21%提高到53.37%。

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