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Robust Surface Registration Using a Gaussian-Weighted Distance Map in PET-CT Brain Images

机译:使用PET-CT脑图像中高斯加权距离图的强大的表面注册

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In this paper, we propose a robust surface registration using a Gaussian-weighted distance map for PET-CT brain fusion. Our method is composed of three steps. First, we segment the head using the inverse region growing and remove the non-head regions segmented with the head using the region growing-based labeling in PET and CT images, respectively. The feature points of the head are then extracted using sharpening filter. Second, a Gaussian-weighted distance map is generated from the feature points of CT images to lead our similarity measure to robust convergence on the optimal location. Third, weighted cross-correlation measures the similarities between the feature points extracted from PET images and the Gaussian-weighted distance map of CT images. In our experiments, we use software phantom and clinical datasets for evaluating our method with the aspect of visual inspection, accuracy, robustness, and computation time. Experimental results show that our method is more accurate and robust than the conventional ones.
机译:在本文中,我们向PET-CT脑融合的高斯加权距离图提出了一种鲁棒的表面注册。我们的方法由三个步骤组成。首先,我们使用逆区域段分割头部,并使用PET和CT图像中的区域生长的标记移除用头部分割的非头部区域。然后使用锐化滤波器提取头部的特征点。其次,从CT图像的特征点产生高斯加权距离图,以引导我们的相似度测量来对最佳位置上的鲁棒融合。第三,加权互相关测量从PET图像提取的特征点和CT图像的高斯加权距离图之间的相似性。在我们的实验中,我们使用软件幻影和临床数据集来评估我们的方法,以评估目视检查,准确性,鲁棒性和计算时间的方面。实验结果表明,我们的方法比传统方式更准确且鲁棒。

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