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Limited view angle tomographic image reconstruction via total variation minimization

机译:通过总变化最小化的有限视角断层图像重建

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In tomosynthesis, cone-beam projection data are acquired from a few of view angles, which are not sufficient for an exact reconstruction of an image object using state-of-the-art image reconstruction algorithms. In the case of parallel-beam projections, the well-known projection-slice theorem may be utilized to transform the parallel-beam projections into the Fourier space of an image object. Due to the limited range of view angles, the available projection data can only populate a portion of Fourier space. Moreover, the angular sampling rate of the populated portion of the Fourier space may not satisfy the Nyquist criterion. Thus, reconstructed images using direct Fourier inversion contain severe streaking and distortion artifacts. In this paper, we present a novel image reconstruction method via minimizing the total variation (TV) of the reconstructed image for limited view angle X-ray computed tomography. Specifically, the missing data points in Fourier space, due to either the limited range or undersampling of view angles, are iteratively filled using the following two constraint conditions: (1) the total variation of the reconstructed image is minimized and (2) reconstructed image maintains fidelity to the sampled data in the Fourier space. Using analytical phantoms, numerical simulations were conducted to validate the new image reconstruction method. Images are compared with two other image reconstruction methods in terms of image artifact level and noise properties. Numerical results demonstrated that the new image reconstruction algorithm is superior to direct Fourier inversion reconstruction algorithm and the projection onto convex sets (POCS) image reconstruction algorithm.
机译:在Tomosynthesis中,从少数视角获取锥形光束投影数据,这不足以使用最先进的图像重建算法的图像对象的精确重建。在平行束投影的情况下,可以利用众所周知的投影切片定理来将平行束投影转换为图像对象的傅立叶空间。由于视角范围有限,可用的投影数据只能填充一部分傅里叶空间。此外,傅立叶空间的填充部分的角度采样率可能不满足奈奎斯特标准。因此,使用直接傅里叶反转的重建图像包含严重的条纹和失真伪像。在本文中,我们通过最小化用于有限视角X射线计算机断层扫描的重建图像的总变化(TV)来提出一种新颖的图像重建方法。具体地,傅里叶空间中的缺失数据点,由于视图角度的有限范围或下采样,使用以下两个约束条件迭代地填充:(1)重建图像的总变化最小化,(2)重建图像将保真度维护到傅立叶空间中的采样数据。使用分析幽灵,进行数值模拟以验证新的图像重建方法。在图像伪影水平和噪声属性方面将图像与两种其他图像重建方法进行比较。数值结果表明,新的图像重建算法优于直接傅立叶反转重建算法和投影到凸集(POCS)图像重建算法上。

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