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基于模糊推理的模糊原型网络
引用本文:杜炎,吕良福,焦一辰. 基于模糊推理的模糊原型网络[J]. 计算机应用, 2021, 41(7): 1885-1890. DOI: 10.11772/j.issn.1001-9081.2020091482
作者姓名:杜炎  吕良福  焦一辰
作者单位:天津大学 数学学院, 天津 300350
摘    要:针对真实数据具有的模糊性和不确定性会严重影响小样本学习分类结果这一问题,改进并优化了传统的小样本学习原型网络,提出了基于模糊推理的模糊原型网络(FPN).首先,从卷积神经网络(CNN)和模糊神经网络两个方向分别获取图像特征信息;然后,对获得的两部分信息进行线性知识融合,得到最终的图像特征;最后,度量各个类别原型到查询集...

关 键 词:小样本学习  模糊推理  原型网络  特征融合  深度学习
收稿时间:2020-09-23
修稿时间:2020-12-14

Fuzzy prototype network based on fuzzy reasoning
DU Yan,LYU Liangfu,JIAO Yichen. Fuzzy prototype network based on fuzzy reasoning[J]. Journal of Computer Applications, 2021, 41(7): 1885-1890. DOI: 10.11772/j.issn.1001-9081.2020091482
Authors:DU Yan  LYU Liangfu  JIAO Yichen
Affiliation:School of Mathematics, Tianjin University, Tianjin 300350, China
Abstract:In order to solve the problem that the fuzziness and uncertainty of real data may seriously affect the classification results of few-shot learning, a Fuzzy Prototype Network (FPN) based on fuzzy reasoning was proposed by improving and optimizing the traditional few-shot learning prototype network. Firstly, the image feature information was obtained from Convolutional Neural Network (CNN) and fuzzy neural network, respectively. Then, linear knowledge fusion was performed on the two obtained parts of information to obtain the final image features. Finally, to achieve the final classification effect, the Euclidean distance between each category prototype and the query set was measured. A series of experiments were carried out on the mainstream datasets Omniglot and miniImageNet for few-shot learning classification. On miniImageNet dataset, the model achieves accuracy of 49.38% under the experimental setting of 5-way 1-shot, accuracy of 67.84% under the experimental setting of 5-way 5-shot, and accuracy of 51.40% under the experimental setting of 30-way 1-shot; and compared with the traditional prototype network, the model also has the accuracy greatly improved on Omniglot dataset.
Keywords:few-shot learning  fuzzy reasoning  prototype network  feature fusion  deep learning  
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