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基于对比约束的可解释小样本学习

  • Lingling Zhang
  • , Yiwei Chen
  • , Wenjun Wu
  • , Bifan Wei
  • , Xuan Luo
  • , Xiaojun Chang
  • , Jun Liu
  • Xi'an Jiaotong University
  • Royal Melbourne Institute of Technology University

科研成果: 期刊稿件文章同行评审

8 引用 (Scopus)

摘要

Different from deep learning with large scale supervision, few-shot learning aims to learn the samples' characteristics from a few labeled examples. Apparently, few-shot learning is more in line with the visual cognitive mechanism of the human brain. In recent years, few-shot learning has attracted more researchers' attention. In order to discover the semantic similarities between the query set (unlabeled image) and support set (few labeled images) in feature embedding space, methods which combine meta-learning and metric learning have emerged and achieved great performance on few-shot image classification tasks. However, these methods lack the interpretability, which means they could not provide a reasoning explainable process like human cognitive mechanism. Therefore, we propose a novel interpretable few-shot learning method called INT-FSL based on the positional attention mechanism, which aims to reveal two key problems in few-shot classification: 1)Which parts of the unlabeled image play an important role in classification task; 2)Which class of features reflected by the key parts. Besides, we design the contrastive constraints on global and local levels in every few-shot meta task, for alleviating the limited supervision with the internal information of the data. We conduct extensive experiments on three image benchmark datasets. The results show that the proposed model INT-FSL not only could improve the classification performance on few-shot learning effectively, but also has good interpretability in the reasoning process.

投稿的翻译标题Interpretable Few-Shot Learning with Contrastive Constraint
源语言繁体中文
页(从-至)2573-2584
页数12
期刊Jisuanji Yanjiu yu Fazhan/Computer Research and Development
58
12
DOI
出版状态已出版 - 12月 2021

关键词

  • Contrastive learning
  • Few-shot learning
  • Image recognition
  • Interpretable analysis
  • Local descriptor

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