基于Hebbian学习的正电子发射断层成像图像重建

P. Mondal, R. Kanhirodan
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引用次数: 1

摘要

最大后验(MAP)算法利用重构过程中可用的先验信息消除噪声伪影。基于MAP的算法无法确定重建图像中的密度类别,因此无论密度类别如何,也无论最近邻居之间的相互作用如何,都会对像素进行惩罚。本文提出了Hebbian神经学习方案来模拟像素间相互作用的性质,以重建无伪影的边缘保持重建。假设局部相关性在图像重建过程中起着重要作用,正确建模相关权值(定义像素间相互作用的强度)对于生成无伪影重建至关重要。定量分析表明,所提出的基于方案的重构算法能够产生较好的重构图像。重建后的图像更加清晰,小的特征得到了更好的分辨
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hebbian Learning Based Image Reconstruction for Positron Emission Tomography
Maximum a-posteriori (MAP) algorithms eliminates noisy artifacts by utilizing available prior information in the reconstruction process. The MAP based algorithms fail to determine the density class in the reconstructed image and hence penalize the pixels irrespective of the density class and irrespective of interaction between the nearest neighbors. In this paper, Hebbian neural learning scheme is proposed to model the nature of inter-pixel interaction in order to reconstruct artifact-free edge-preserving reconstruction. It is assumed that local correlation plays a significant role in the image reconstruction process and proper modeling of correlation weight (which defines the strength of inter-pixel interaction) is essential for generating artifact free reconstruction. Quantitative analysis shows that the proposed scheme based reconstruction algorithm is capable of producing better reconstructed images. The reconstructed images are sharper with small features being better resolved
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