首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Regularized maximum likelihood algorithm for PET image reconstruction using a detail and edges preserving anisotropic diffusion
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Regularized maximum likelihood algorithm for PET image reconstruction using a detail and edges preserving anisotropic diffusion

机译:使用细节和边缘保留各向异性扩散的正则化最大似然算法用于PET图像重建

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摘要

The traditional iterative reconstruction algorithms of positron emission tomography cannot effectively suppress the noise in low SNR case. Recently anisotropic diffusion (AD) is introduced into tomography reconstruction, which can improve the reconstructed image. Although AD reconstruction algorithm can suppress noise, it does not perverse the detail edge information accurately, especially the thin edges. In order to solve the problem, we introduce a new anisotropic diffusion term, which can preserve the detail edges effectively, into the maximum likelihood algorithm, and combine with median filter, forming the regularized maximum likelihood algorithm in PET image reconstruction (PML_NewAD). Results of computer simulated demonstrate that compared with the other classical reconstruction algorithms, PML_NewAD not only availably suppress the noise and produce a higher quality image, but also preserve the structure of image's edge excellently.
机译:在低信噪比的情况下,传统的正电子发射断层扫描迭代迭代算法无法有效地抑制噪声。最近,各向异性扩散(AD)被引入到层析成像重建中,这可以改善重建的图像。尽管AD重建算法可以抑制噪声,但是它不能准确地扭曲细节边缘信息,尤其是细边缘。为了解决该问题,我们在最大似然算法中引入了一个新的各向异性扩散项,可以有效地保留细节边缘,并与中值滤波相结合,形成PET图像重建中的正则化最大似然算法(PML_NewAD)。计算机仿真结果表明,与其他经典的重建算法相比,PML_NewAD不仅可以有效地抑制噪声并产生更高质量的图像,而且可以很好地保留图像边缘的结构。

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