Tomographic Image Reconstruction Using an Advanced Score Function (ADSF).

ArXiv Pub Date : 2024-02-29
Wenxiang Cong, Wenjun Xia, Ge Wang
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Abstract

Computed tomography (CT) reconstructs volumetric images using X-ray projection data acquired from multiple angles around an object. For low-dose or sparse-view CT scans, the classic image reconstruction algorithms often produce severe noise and artifacts. To address this issue, we develop a novel iterative image reconstruction method based on maximum a posteriori (MAP) estimation. In the MAP framework, the score function, i.e., the gradient of the logarithmic probability density distribution, plays a crucial role as an image prior in the iterative image reconstruction process. By leveraging the Gaussian mixture model, we derive a novel score matching formula to establish an advanced score function (ADSF) through deep learning. Integrating the new ADSF into the image reconstruction process, a new ADSF iterative reconstruction method is developed to improve image reconstruction quality. The convergence of the ADSF iterative reconstruction algorithm is proven through mathematical analysis. The performance of the ADSF reconstruction method is also evaluated on both public medical image datasets and clinical raw CT datasets. Our results show that the ADSF reconstruction method can achieve better denoising and deblurring effects than the state-of-the-art reconstruction methods, showing excellent generalizability and stability.

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基于分数匹配的稀疏低剂量CT数据的图像重建。
计算机断层扫描(CT)从物体周围多个角度采集的X射线投影重建截面图像。通过只测量全投影数据的一小部分,CT图像重建可以减少辐射剂量和扫描时间。然而,对于经典的分析算法,数据不足的CT的重建总是会损害结构细节,并遭受严重的伪影。为了解决这个问题,我们提出了一种基于深度学习的图像重建方法,该方法源自最大后验(MAP)估计。在贝叶斯统计框架中,图像对数概率密度分布的梯度,即得分函数,在图像重建过程中起着至关重要的作用。重建算法从理论上保证了迭代过程的收敛性。我们的数值结果还表明,该方法产生了良好的稀疏CT图像。
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