探索光谱分析与迁移学习在医学影像中的关联。

Yucheng Lu, Dovile Juodelyte, Jonathan D Victor, Veronika Cheplygina
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引用次数: 0

摘要

在本文中,我们使用频谱分析来研究迁移学习,并研究医学成像中模型对频率捷径的敏感性。通过分析预训练和微调模型梯度的功率谱密度,以及人工生成的频率捷径,我们观察到在自然图像和医学图像上预训练的模型在学习优先级上的显著差异,这种差异通常在微调期间持续存在。我们发现,当一个模型的学习优先级与一个工件的功率谱密度一致时,它会导致对该工件的过拟合。基于这些观察,我们表明源数据编辑可以改变模型对快速学习的抵抗力。代码可在:https://github.com/YCL92/Shortcut-PSD。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring connections of spectral analysis and transfer learning in medical imaging.

In this paper, we use spectral analysis to investigate transfer learning and study model sensitivity to frequency shortcuts in medical imaging. By analyzing the power spectrum density of both pre-trained and fine-tuned model gradients, as well as artificially generated frequency shortcuts, we observe notable differences in learning priorities between models pre-trained on natural vs medical images, which generally persist during fine-tuning. We find that when a model's learning priority aligns with the power spectrum density of an artifact, it results in overfitting to that artifact. Based on these observations, we show that source data editing can alter the model's resistance to shortcut learning. Code available at: https://github.com/YCL92/Shortcut-PSD.

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