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Pan et al., 2022 - Google Patents

Transductive graph-attention network for few-shot classification

Pan et al., 2022

Document ID
12762638313404367780
Author
Pan L
Liu W
Publication year
Publication venue
2022 16th IEEE International Conference on Signal Processing (ICSP)

External Links

Snippet

Few-shot Classification aims to use a small number of labeled samples to learn a general model that can solve the problem of image classification. At present, Few-shot Classification methods can be divided into three categories: Data Augmentation, Model Optimization and …
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Classifications

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