Feather-Light Fourier Domain Adaptation in Magnetic Resonance Imaging

Ivan Zakazov, V. Shaposhnikov, Iaroslav Bespalov, D. Dylov
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引用次数: 3

Abstract

Generalizability of deep learning models may be severely affected by the difference in the distributions of the train (source domain) and the test (target domain) sets, e.g., when the sets are produced by different hardware. As a consequence of this domain shift, a certain model might perform well on data from one clinic, and then fail when deployed in another. We propose a very light and transparent approach to perform test-time domain adaptation. The idea is to substitute the target low-frequency Fourier space components that are deemed to reflect the style of an image. To maximize the performance, we implement the"optimal style donor"selection technique, and use a number of source data points for altering a single target scan appearance (Multi-Source Transferring). We study the effect of severity of domain shift on the performance of the method, and show that our training-free approach reaches the state-of-the-art level of complicated deep domain adaptation models. The code for our experiments is released.
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磁共振成像中的轻羽傅立叶域自适应
深度学习模型的可泛化性可能会受到训练集(源域)和测试集(目标域)分布差异的严重影响,例如,当这些集由不同的硬件产生时。作为这种领域转移的结果,某个模型可能在一个诊所的数据上表现良好,但在另一个诊所部署时就会失败。我们提出了一种非常简单和透明的方法来执行测试时域自适应。这个想法是替换被认为反映图像风格的目标低频傅里叶空间分量。为了最大限度地提高性能,我们实现了“最佳风格供体”选择技术,并使用多个源数据点来改变单个目标扫描外观(多源传输)。我们研究了域漂移的严重程度对方法性能的影响,并表明我们的无训练方法达到了复杂深度域自适应模型的最新水平。我们实验的代码发布了。
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