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Dual Path Structural Contrastive Embeddings for Learning Novel Objects
[article]
2021
Learning novel classes from a very few labeled samples has attracted increasing attention in machine learning areas. Recent research on either meta-learning based or transfer-learning based paradigm demonstrates that gaining information on a good feature space can be an effective solution to achieve favorable performance on few-shot tasks. In this paper, we propose a simple but effective paradigm that decouples the tasks of learning feature representations and classifiers and only learns the
doi:10.48550/arxiv.2112.12359
fatcat:ia2zya4qgbbx3bbl6qgqc6ttea