A Non-Rigid 3D Multi-Modal Registration Algorithm Using Partial Volume Interpolation and the Sum of Conditional Variance

Mst. Nargis Aktar, M. Alam, M. Pickering
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引用次数: 5

Abstract

Multi-modal medical image registration provides complementary information from the fusion of various medical imaging modalities. This paper presents a volume based multi-modal affine registration algorithm to register images acquired using different magnetic resonance imaging (MRI) modes. In the proposed algorithm, the sum-of-conditional variance (SCV) similarity measure is used. The SCV is considered to be a state-of-the- art similarity measure for registering multi-modal images. However, the main drawback of the SCV is that it uses only quantized information to calculate a joint histogram. To overcome this limitation, we propose to use partial volume interpolation (PVI) in the joint histogram calculation to improve the performance of the existing registration algorithm. To evaluate the performance of the registration algorithm, different similarity measures were compared in conjunction with gradient-based Gauss-Newton (GN) optimization to optimize the spatial transformation parameters. The experimental evaluation shows that the proposed approach provides a higher success rate and comparable accuracy to other methods that have been recently proposed for multi-modal medical image registration.
基于部分体插值和条件方差和的非刚性三维多模态配准算法
多模态医学图像配准提供了多种医学成像模式融合的互补信息。本文提出了一种基于体的多模态仿射配准算法,用于配准不同磁共振成像模式下的图像。该算法采用条件方差和(sum-of-conditional variance, SCV)相似度度量。SCV被认为是一种最先进的多模态图像配准相似度量。然而,SCV的主要缺点是它只使用量化信息来计算联合直方图。为了克服这一限制,我们提出在联合直方图计算中使用部分体积插值(PVI)来提高现有配准算法的性能。为了评估配准算法的性能,比较了不同的相似度度量,并结合基于梯度的高斯-牛顿(GN)优化来优化空间变换参数。实验结果表明,该方法在多模态医学图像配准方面具有较高的成功率和相当的精度。
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