首页> 外文期刊>Journal of VLSI signal processing systems for signal, image, and video technology >Multimodality Image Registration Using Spatial Procrustes Analysis And Modified Conditional Entropy
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Multimodality Image Registration Using Spatial Procrustes Analysis And Modified Conditional Entropy

机译:基于空间过程分析和修正条件熵的多模态图像配准

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摘要

In this paper, we propose a new image registration technique using two kinds of information known as object shapes and voxel intensities. The proposed approach consists of two registration steps. First, an initial registration is carried out for two volume images by applying Procrustes analysis theory to the two sets of 3D feature points representing object shapes. During this first stage, a volume image is segmented by using a geometric deform-able model. Then, 3D feature points are extracted from the boundary of a segmented object. We conduct an initialrnregistration by applying Procrustes analysis theory with two sets of 3D feature points. Second, a fine registration is followed by using a new measure based on the entropy of conditional probabilities. Here, to achieve the final registration, we define a modified conditional entropy (MCE) computed from the joint histograms for voxel intensities of two given volume images. By using a two step registration method, we can improve the registration precision. To evaluate the performance of the proposed registration method, we conduct various experiments for our method as well as existing methods based on the mutual information (Ml) and maximum likelihood (ML) criteria. We evaluate the precision of MI, ML and MCE-based measurements by comparing their registration traces obtained from magnetic resonance (MR) images and transformed computed tomography (CT) images with respect to x-translation and rotation. The experimental results show that our method has great potential for the registration of a variety of medical images.
机译:在本文中,我们提出了一种新的图像配准技术,该技术使用了两种信息,即物体形状和体素强度。提议的方法包括两个注册步骤。首先,通过将Procrustes分析理论应用于代表对象形状的两组3D特征点,对两个体积图像进行初始配准。在此第一阶段,通过使用几何可变形模型对体积图像进行分割。然后,从分割对象的边界提取3D特征点。我们通过应用Procrustes分析理论和两组3D特征点进行初始注册。其次,根据条件概率的熵,使用新的度量进行精细配准。在这里,为了实现最终配准,我们定义了一个修正的条件熵(MCE),该条件熵是根据联合直方图计算的两个给定体积图像的体素强度的。通过使用两步注册方法,我们可以提高注册精度。为了评估提出的注册方法的性能,我们基于互信息(M1)和最大似然(ML)标准对我们的方法以及现有方法进行了各种实验。我们通过比较从磁共振(MR)图像和变换的计算机断层扫描(CT)图像获得的关于x平移和旋转的配准迹线,评估基于MI,ML和MCE的测量的精度。实验结果表明,我们的方法在多种医学图像配准方面具有巨大的潜力。

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