Similarity-Difference Relation Network for Few-Shot Learning

Changhu Cheng, Yang Peng
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Abstract

Few-shot learning aims to build a classification model by training a small amount of labeled sample data, which can be well adapted to new domains. The key point of few-shot learning is that a small amount of sample data cannot reflect the true data distribution. Training on a small amount of sample data will lead to over-fitting of the deep neural network model. The differences between different categories are ignored when using similarity measures for classification. This paper proposes a novel few-shot learning method based on similarity-difference relation network, which uses shallow wide residual network to extract the features of the training dataset and fuses them into a category prototype. Meanwhile, SDRN pays attention to the characterization of similarities and differences between positive and negative samples. This paper verifies the effectiveness of the similarity-difference relational network on the Mini-ImageNet and Tiered-ImageNet datasets. The experimental results show that the similarity-difference two-way relational network further improves image classification accuracy in the few-shot learning task.
少射学习的相似-差异关系网络
Few-shot学习旨在通过训练少量标记的样本数据来构建分类模型,该模型可以很好地适应新的领域。few-shot学习的关键在于少量的样本数据不能反映真实的数据分布。在少量样本数据上进行训练会导致深度神经网络模型的过拟合。当使用相似度量进行分类时,不同类别之间的差异被忽略。本文提出了一种新的基于相似-差异关系网络的少镜头学习方法,该方法利用浅宽残差网络提取训练数据集的特征并将其融合到类别原型中。同时,SDRN注重正负样本的异同表征。本文验证了相似差关系网络在Mini-ImageNet和Tiered-ImageNet数据集上的有效性。实验结果表明,在少镜头学习任务中,相似-差异双向关系网络进一步提高了图像分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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