Unified View Empirical Study for Large Pretrained Model on Cross-Domain Few-Shot Learning

Author:

Zhuo Linhai1ORCID,Fu Yuqian2ORCID,Chen Jingjing3ORCID,Cao Yixin4ORCID,Jiang Yu-Gang3ORCID

Affiliation:

1. College of Computer and Data Science, Fuzhou University, China

2. ETH Zürich, Switzerland

3. Shanghai Key Lab of Intell. Info. Processing, School of CS, Fudan University, China

4. Shanghai Key Lab of Intell. Info. Processing, School of CS, Fudan University, Shanghai, China

Abstract

The challenge of cross-domain few-shot learning (CD-FSL) stems from the substantial distribution disparities between target and source domain images, necessitating a model with robust generalization capabilities. In this work, we posit that large-scale pretrained models are pivotal in addressing the cross-domain few-shot learning task owing to their exceptional representational and generalization prowess. To our knowledge, no existing research comprehensively investigates the utility of large-scale pretrained models in the cross-domain few-shot learning context. Addressing this gap, our study presents an exhaustive empirical assessment of the CLIP model within the cross-domain few-shot learning task. We undertake a comparison spanning six dimensions: base model, transfer module, classifier, loss, data augmentation, and training schedule. Furthermore, we establish a straightforward baseline model, E-base, based on our empirical analysis, underscoring the importance of our investigation. Experimental results substantiate the efficacy of our model, yielding a mean gain of 1.2% in 5-way 5-shot evaluations on the BSCD dataset.

Publisher

Association for Computing Machinery (ACM)

Reference55 articles.

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5. Noel Codella Veronica Rotemberg Philipp Tschandl M Emre Celebi Stephen Dusza David Gutman Brian Helba Aadi Kalloo Konstantinos Liopyris Michael Marchetti et al. 2019. Skin lesion analysis toward melanoma detection 2018: A challenge hosted by the international skin imaging collaboration (isic). arXiv preprint arXiv:1902.03368 (2019).

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