Task-Relevant Few-Shot Image Classification
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    Abstract:

    The traditional metric learning based few-shot image classification methods are task independent, which leads to poor generalization performance of the model on new query tasks. To solve this problem, a taskrelevant image few-shot learning method was proposed in this paper, which can adaptively adjust the feature of support samples according to the query task. Moreover, a variety of regularization methods to address the overfitting problem under severely-limited data scenarios were also investigated. We conduct comprehensive experiments on two popular benchmarks, i.e., miniImageNet and tieredImageNet. The result of 1-shot task on the miniImageNet by the proposed method was 66.05%, and it outperforms the SOTA (state of the art) approaches by 4.29% under the same backbones.

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CHEN Chen, WANG Yali, QIAO Yu. Task-Relevant Few-Shot Image Classification[J]. Journal of Integration Technology,2020,9(3):15-25

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  • Received:April 02,2020
  • Revised:April 23,2020
  • Adopted:
  • Online: May 18,2020
  • Published: