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A Bayesian Hyperparameter Inference for Radon-Transformed Image Reconstruction

机译:Rad变换图像重建的贝叶斯超参数推断

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摘要

We develop a hyperparameter inference method for image reconstruction from Radon transform which often appears in the computed tomography, in the manner of Bayesian inference. Hyperparameters are often introduced in Bayesian inference to control the strength ratio between prior information and the fidelity to the observation. Since the quality of the reconstructed image is controlled by the estimation accuracy of these hyperparameters, we apply Bayesian inference into the filtered back-projection (FBP) reconstruction method with hyperparameters inference and demonstrate that the estimated hyperparameters can adapt to the noise level in the observation automatically. In the computer simulation, at first, we show that our algorithm works well in the model framework environment, that is, observation noise is an additive white Gaussian noise case. Then, we also show that our algorithm works well in the more realistic environment, that is, observation noise is Poissonian noise case. After that, we demonstrate an application for the real chest CT image reconstruction under the Gaussian and Poissonian observation noises.
机译:我们开发了一种用于从Radon变换重建图像的超参数推理方法,该方法通常以贝叶斯推理的方式出现在计算机断层扫描中。通常在贝叶斯推理中引入超参数,以控制先验信息与观察的逼真度之间的强度比。由于重建图像的质量受这些超参数的估计精度控制,因此我们将贝叶斯推断应用于具有超参数推断的滤波反投影(FBP)重建方法中,并证明估计的超参数可以适应观测中的噪声水平自动。首先,在计算机仿真中,我们证明了我们的算法在模型框架环境中运行良好,即观察噪声是加性高斯白噪声情况。然后,我们还证明了我们的算法在更现实的环境中也能很好地工作,即观察噪声是泊松噪声情况。之后,我们展示了在高斯和泊松观测噪声下真实胸部CT图像重建的应用。

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