论文标题

从成像测量中学习随机对象模型的逐步增长的环境

Progressively-Growing AmbientGANs For Learning Stochastic Object Models From Imaging Measurements

论文作者

Zhou, Weimin, Bhadra, Sayantan, Brooks, Frank J., Li, Hua, Anastasio, Mark A.

论文摘要

医学成像系统的客观优化需要对测量数据中的所有随机性进行全面表征,其中包括图像成像的对象集合中的可变性。这可以通过建立一个随机对象模型(SOM)来实现,该模型(SOM)描述了要模拟的对象类别的变异性。生成的对抗网络(GAN)可能对建立SOM有可能有用,因为它们具有巨大的希望,可以学习描述培训数据集合中可变性的生成模型。但是,由于医学成像系统记录对象属性嘈杂和间接表示的成像测量值,因此不能直接应用gans来建立成像的对象的随机模型。为了解决这个问题,开发了一个名为Ambientgan的增强的GAN架构,以从嘈杂和间接的测量数据中建立SOM。但是,由于对抗性训练可能是不稳定的,因此可能会受到限制。在这项工作中,我们提出了一种新颖的培训策略 - - 逐步增长环境(Proagan)---稳定训练环境,以建立噪音和间接成像测量的SOM。考虑了理想化的磁共振(MR)成像系统和临床MR脑图像。通过比较使用proagan生成的合成图像和描述真实对象属性的图像计算出的信号检测性能来评估所提出的方法。

The objective optimization of medical imaging systems requires full characterization of all sources of randomness in the measured data, which includes the variability within the ensemble of objects to-be-imaged. This can be accomplished by establishing a stochastic object model (SOM) that describes the variability in the class of objects to-be-imaged. Generative adversarial networks (GANs) can be potentially useful to establish SOMs because they hold great promise to learn generative models that describe the variability within an ensemble of training data. However, because medical imaging systems record imaging measurements that are noisy and indirect representations of object properties, GANs cannot be directly applied to establish stochastic models of objects to-be-imaged. To address this issue, an augmented GAN architecture named AmbientGAN was developed to establish SOMs from noisy and indirect measurement data. However, because the adversarial training can be unstable, the applicability of the AmbientGAN can be potentially limited. In this work, we propose a novel training strategy---Progressive Growing of AmbientGANs (ProAGAN)---to stabilize the training of AmbientGANs for establishing SOMs from noisy and indirect imaging measurements. An idealized magnetic resonance (MR) imaging system and clinical MR brain images are considered. The proposed methodology is evaluated by comparing signal detection performance computed by use of ProAGAN-generated synthetic images and images that depict the true object properties.

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