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Reverse Knowledge Distillation: Training a Large Model using a Small One for Retinal Image Matching on Limited Data

Computer Vision and Pattern Recognition 2023-07-24 v2

Abstract

Retinal image matching plays a crucial role in monitoring disease progression and treatment response. However, datasets with matched keypoints between temporally separated pairs of images are not available in abundance to train transformer-based model. We propose a novel approach based on reverse knowledge distillation to train large models with limited data while preventing overfitting. Firstly, we propose architectural modifications to a CNN-based semi-supervised method called SuperRetina that help us improve its results on a publicly available dataset. Then, we train a computationally heavier model based on a vision transformer encoder using the lighter CNN-based model, which is counter-intuitive in the field knowledge-distillation research where training lighter models based on heavier ones is the norm. Surprisingly, such reverse knowledge distillation improves generalization even further. Our experiments suggest that high-dimensional fitting in representation space may prevent overfitting unlike training directly to match the final output. We also provide a public dataset with annotations for retinal image keypoint detection and matching to help the research community develop algorithms for retinal image applications.

Keywords

Cite

@article{arxiv.2307.10698,
  title  = {Reverse Knowledge Distillation: Training a Large Model using a Small One for Retinal Image Matching on Limited Data},
  author = {Sahar Almahfouz Nasser and Nihar Gupte and Amit Sethi},
  journal= {arXiv preprint arXiv:2307.10698},
  year   = {2023}
}
R2 v1 2026-06-28T11:35:41.242Z