LSFSL: Leveraging Shape Information in Few-shot Learning
Abstract
Few-shot learning (FSL) techniques seek to learn the underlying patterns in data using fewer samples, analogous to how humans learn from limited experience. In this limited-data scenario, the challenges associated with deep neural networks, such as shortcut learning and texture bias behaviors, are further exacerbated. Moreover, the significance of addressing shortcut learning is not yet fully explored in the few-shot setup. To address these issues, we propose LSFSL, which enforces the model to learn more generalizable features utilizing the implicit prior information present in the data. Through comprehensive analyses, we demonstrate that LSFSL-trained models are less vulnerable to alteration in color schemes, statistical correlations, and adversarial perturbations leveraging the global semantics in the data. Our findings highlight the potential of incorporating relevant priors in few-shot approaches to increase robustness and generalization.
Cite
@article{arxiv.2304.06672,
title = {LSFSL: Leveraging Shape Information in Few-shot Learning},
author = {Deepan Chakravarthi Padmanabhan and Shruthi Gowda and Elahe Arani and Bahram Zonooz},
journal= {arXiv preprint arXiv:2304.06672},
year = {2023}
}
Comments
Accepted at CVPR 2023 (2nd Workshop on Learning with Limited Labelled Data for Image and Video Understanding)