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Multi-Scale Metric Learning for Few-Shot Learning

机译:几尺寸度量学习几秒钟学习

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Few-shot learning in image classification is developed to learn a model that aims to identify unseen classes with only few training samples for each class. Fewer training samples and new tasks of classification make many traditional classification models no longer applicable. In this paper, a novel few-shot learning method named multi-scale metric learning (MSML) is proposed to extract multi-scale features and learn the multi-scale relations between samples for the classification of few-shot learning. In the proposed method, a feature pyramid structure is introduced for multi-scale feature embedding, which aims to combine high-level strong semantic features with low-level but abundant visual features. Then a multi-scale relation generation network (MRGN) is developed for hierarchical metric learning, in which high-level features are corresponding to deeper metric learning while low-level features are corresponding to lighter metric learning. Moreover, a novel loss function named intra-class and inter-class relation loss (IIRL) is proposed to optimize the proposed deep network, which aims to strengthen the correlation between homogeneous groups of samples and weaken the correlation between heterogeneous groups of samples. Experimental results on mini ImageNet and tiered ImageNet demonstrate that the proposed method achieves superior performance in few-shot learning problem.
机译:显影分类中的几次射门学习是为了学习一个旨在识别未识别的课程课程的模型,只有每个班级的训练样本。更少的培训样本和分类的新任务使许多传统的分类模型不再适用。本文提出了一种名为多尺度度量学习(MSML)的小说新颖的学习方法,以提取多尺度特征,并学习样品之间的多尺度关系,以进行几次拍摄学习的分类。在该方法中,引入了一个特征金字塔结构,用于多尺度特征嵌入,旨在将高级强大语义特征与低电平但丰富的可视特征结合起来。然后,为分层度量学习开发了一种多尺度关系生成网络(MRGN),其中高级功能对应于更深的度量学习,而低级功能对应于更轻的度量学习。此外,提出了一种名为类内和阶级关系损失(IIRL)的新型损失函数,以优化所提出的深网络,旨在增强均质样品组之间的相关性并削弱异质样品组之间的相关性。 Mini Imageenet和分层Imagenet的实验结果表明,该方法在几次学习问题中实现了卓越的性能。

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