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利用强度级别信息对相对分段连续图像进行同步重建、分割和边缘增强。

Simultaneous reconstruction, segmentation, and edge enhancement of relatively piecewise continuous images with intensity-level information.

作者信息

Liang Z, Jaszczak R, Coleman R, Johnson V

机构信息

Department of Radiology, Duke University Medical Center, Durham, North Carolina 27710.

出版信息

Med Phys. 1991 May-Jun;18(3):394-401. doi: 10.1118/1.596685.

Abstract

A multinomial image model is proposed which uses intensity-level information for reconstruction of contiguous image regions. The intensity-level information assumes that image intensities are relatively constant within contiguous regions over the image-pixel array and that intensity levels of these regions are determined either empirically or theoretically by information criteria. These conditions may be valid, for example, for cardiac blood-pool imaging, where the intensity levels (or radionuclide activities) of myocardium, blood-pool, and background regions are distinct and the activities within each region of muscle, blood, or background are relatively uniform. To test the model, a mathematical phantom over a 64 x 64 array was constructed. The phantom had three contiguous regions. Each region had a different intensity level. Measurements from the phantom were simulated using an emission-tomography geometry. Fifty projections were generated over 180 degrees, with 64 equally spaced parallel rays per projection. Projection data were randomized to contain Poisson noise. Image reconstructions were performed using an iterative maximum a posteriori probability procedure. The contiguous regions corresponding to the three intensity levels were automatically segmented. Simultaneously, the edges of the regions were sharpened. Noise in the reconstructed images was significantly suppressed. Convergence of the iterative procedure to the phantom was observed. Compared with maximum likelihood and filtered-backprojection approaches, the results obtained using the maximum a posteriori probability with the intensity-level information demonstrated qualitative and quantitative improvement in localizing the regions of varying intensities.

摘要

提出了一种多项式图像模型,该模型利用强度级别信息来重建连续的图像区域。强度级别信息假定图像强度在图像像素阵列中的连续区域内相对恒定,并且这些区域的强度级别由信息准则根据经验或理论确定。例如,对于心脏血池成像,这些条件可能是有效的,在心脏血池成像中,心肌、血池和背景区域的强度级别(或放射性核素活性)是不同的,并且肌肉、血液或背景的每个区域内的活性相对均匀。为了测试该模型,构建了一个覆盖64×64阵列的数学模型。该模型有三个连续区域。每个区域具有不同的强度级别。使用发射断层扫描几何结构模拟来自该模型的测量值。在180度范围内生成50个投影,每个投影有64条等距平行射线。投影数据被随机化以包含泊松噪声。使用迭代最大后验概率程序进行图像重建。自动分割对应于三个强度级别的连续区域。同时,区域的边缘被锐化。重建图像中的噪声得到了显著抑制。观察到迭代程序收敛到该模型。与最大似然法和滤波反投影法相比,使用带有强度级别信息的最大后验概率法获得的结果在定位不同强度区域方面显示出定性和定量的改进。

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