gan对CT去噪的多尺度纹理损失

IF 14.8
Francesco Di Feola , Lorenzo Tronchin , Valerio Guarrasi , Paolo Soda
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引用次数: 0

摘要

生成对抗网络(GANs)已被证明是医学成像降噪应用的强大框架。然而,基于gan的去噪算法在捕获图像中的复杂关系方面仍然存在局限性。在这方面,损失函数在指导图像生成过程中起着至关重要的作用,它包含了合成图像与真实图像的差异。为了在训练过程中掌握高度复杂和非线性的纹理关系,本文提出了一种新的方法来捕获和嵌入多尺度纹理信息到损失函数中。我们的方法引入了由自关注层动态聚合的图像的可微多尺度纹理表示,从而利用了端到端基于梯度的优化。我们通过在低剂量CT去噪背景下进行广泛的实验来验证我们的方法,低剂量CT去噪是一项具有挑战性的应用,旨在提高噪声CT扫描的质量。我们使用三个公开可用的数据集,包括一个模拟数据集和两个真实数据集。与其他已建立的损失函数相比,结果是有希望的,并且在三种不同的GAN架构中也是一致的。代码可从https://github.com/trainlab/MSTLF-TextureLoss获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-scale texture loss for CT denoising with GANs
Generative Adversarial Networks (GANs) have proved as a powerful framework for denoising applications in medical imaging. However, GAN-based denoising algorithms still suffer from limitations in capturing complex relationships within the images. In this regard, the loss function plays a crucial role in guiding the image generation process, encompassing how much a synthetic image differs from a real image. To grasp highly complex and non-linear textural relationships in the training process, this work presents a novel approach to capture and embed multi-scale texture information into the loss function. Our method introduces a differentiable multi-scale texture representation of the images dynamically aggregated by a self-attention layer, thus exploiting end-to-end gradient-based optimization. We validate our approach by carrying out extensive experiments in the context of low-dose CT denoising, a challenging application that aims to enhance the quality of noisy CT scans. We utilize three publicly available datasets, including one simulated and two real datasets. The results are promising as compared to other well-established loss functions, being also consistent across three different GAN architectures. The code is available at: https://github.com/trainlab/MSTLF-TextureLoss.
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CiteScore
45.00
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