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- Publisher Website: 10.1016/j.neucom.2020.04.040
- Scopus: eid_2-s2.0-85084209390
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Article: Revisiting metric learning for few-shot image classification
Title | Revisiting metric learning for few-shot image classification |
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Authors | |
Keywords | Metric learning Feature representation Few-shot learning Deep learning |
Issue Date | 2020 |
Citation | Neurocomputing, 2020, v. 406, p. 49-58 How to Cite? |
Abstract | The goal of few-shot learning is to recognize new visual concepts with just a few amount of labeled samples in each class. Recent effective metric-based few-shot approaches employ neural networks to learn a feature similarity comparison between query and support examples. However, the importance of feature embedding, i.e., exploring the relationship among training samples, is neglected. In this work, we present a simple yet powerful baseline for few-shot classification by emphasizing the importance of feature embedding. Specifically, we revisit the classical triplet network from deep metric learning, and extend it into a deep K-tuplet network for few-shot learning, utilizing the relationship among the input samples to learn a general representation learning via episode-training. Once trained, our network is able to extract discriminative features for unseen novel categories and can be seamlessly incorporated with a non-linear distance metric function to facilitate the few-shot classification. Our result on the miniImageNet benchmark outperforms other metric-based few-shot classification methods. More importantly, when evaluated on completely different datasets (Caltech-101, CUB-200, Stanford Dogs and Cars) using the model trained with miniImageNet, our method significantly outperforms prior methods, demonstrating its superior capability to generalize to unseen classes. |
Persistent Identifier | http://hdl.handle.net/10722/299624 |
ISSN | 2023 Impact Factor: 5.5 2023 SCImago Journal Rankings: 1.815 |
ISI Accession Number ID |
DC Field | Value | Language |
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dc.contributor.author | Li, Xiaomeng | - |
dc.contributor.author | Yu, Lequan | - |
dc.contributor.author | Fu, Chi Wing | - |
dc.contributor.author | Fang, Meng | - |
dc.contributor.author | Heng, Pheng Ann | - |
dc.date.accessioned | 2021-05-21T03:34:48Z | - |
dc.date.available | 2021-05-21T03:34:48Z | - |
dc.date.issued | 2020 | - |
dc.identifier.citation | Neurocomputing, 2020, v. 406, p. 49-58 | - |
dc.identifier.issn | 0925-2312 | - |
dc.identifier.uri | http://hdl.handle.net/10722/299624 | - |
dc.description.abstract | The goal of few-shot learning is to recognize new visual concepts with just a few amount of labeled samples in each class. Recent effective metric-based few-shot approaches employ neural networks to learn a feature similarity comparison between query and support examples. However, the importance of feature embedding, i.e., exploring the relationship among training samples, is neglected. In this work, we present a simple yet powerful baseline for few-shot classification by emphasizing the importance of feature embedding. Specifically, we revisit the classical triplet network from deep metric learning, and extend it into a deep K-tuplet network for few-shot learning, utilizing the relationship among the input samples to learn a general representation learning via episode-training. Once trained, our network is able to extract discriminative features for unseen novel categories and can be seamlessly incorporated with a non-linear distance metric function to facilitate the few-shot classification. Our result on the miniImageNet benchmark outperforms other metric-based few-shot classification methods. More importantly, when evaluated on completely different datasets (Caltech-101, CUB-200, Stanford Dogs and Cars) using the model trained with miniImageNet, our method significantly outperforms prior methods, demonstrating its superior capability to generalize to unseen classes. | - |
dc.language | eng | - |
dc.relation.ispartof | Neurocomputing | - |
dc.subject | Metric learning | - |
dc.subject | Feature representation | - |
dc.subject | Few-shot learning | - |
dc.subject | Deep learning | - |
dc.title | Revisiting metric learning for few-shot image classification | - |
dc.type | Article | - |
dc.description.nature | link_to_subscribed_fulltext | - |
dc.identifier.doi | 10.1016/j.neucom.2020.04.040 | - |
dc.identifier.scopus | eid_2-s2.0-85084209390 | - |
dc.identifier.volume | 406 | - |
dc.identifier.spage | 49 | - |
dc.identifier.epage | 58 | - |
dc.identifier.eissn | 1872-8286 | - |
dc.identifier.isi | WOS:000540920100006 | - |