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Multi-scale Comparison Network for Few-Shot Learning

机译:少量学习的多尺度比较网络

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Few-shot learning, which learns from a small number of samples, is an emerging field in multimedia. Through systematically exploring influences of scale information, including multi-scale feature extraction, multi-scale comparison and increased parameters brought by multiple scales, in this paper, we present a novel end-to-end model called Multi-scale Comparison Network (MSCN) for few-shot learning. The proposed MSCN uses different scale convolutions for comparison to solve the problem of excessive gaps between target sizes in the images during few-shot learning. It first uses a 4-layer encoder to encode support and testing samples to obtain their feature maps. After deep splicing these feature maps, the proposed MSCN further uses a comparator comprising two layers of multi-scale comparative modules and two fully connected layers to derive the similarity between support and testing samples. Experimental results on two benchmark datasets including Omniglot and miniImagenet shows the effectiveness of the proposed MSCN, which has averagely 2% improvement on miniImagenet in all experimental results compared with the recent Relation Network.
机译:从少量样本中学习的少量学习是多媒体的新兴领域。通过系统地探索尺度信息的影响,包括多尺度特征提取,多尺度比较和多尺度带来的增加的参数,我们提出了一种新颖的端到端模型,称为多尺度比较网络(MSCN)快速学习。所提出的MSCN使用不同尺度的卷积进行比较,以解决在几次摄影过程中图像中目标尺寸之间的间隙过大的问题。它首先使用4层编码器对支持和测试样本进行编码,以获得其特征图。在对这些特征图进行深度拼接之后,建议的MSCN进一步使用一个比较器,该比较器包括两层多尺度比较模块和两个完全连接的层,以得出支持样本和测试样本之间的相似性。在包括Omniglot和miniImagenet在内的两个基准数据集上的实验结果表明,所提出的MSCN的有效性,与最近的关系网相比,在所有实验结果中miniImagenet均平均提高了2%。

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