Haber Eldad, Modersitzki Jan
Mathematics and Computer Science, Emory University, Atlanta, GA, USA.
Med Image Comput Comput Assist Interv. 2006;9(Pt 2):726-33. doi: 10.1007/11866763_89.
A particular problem in image registration arises for multimodal images taken from different imaging devices and/or modalities. Starting in 1995, mutual information has shown to be a very successful distance measure for multi-modal image registration. However, mutual information has also a number of well-known drawbacks. Its main disadvantage is that it is known to be highly non-convex and has typically many local maxima. This observation motivate us to seek a different image similarity measure which is better suited for optimization but as well capable to handle multi-modal images. In this work we investigate an alternative distance measure which is based on normalized gradients and compare its performance to Mutual Information. We call the new distance measure Normalized Gradient Fields (NGF).
对于从不同成像设备和/或模态获取的多模态图像,图像配准中会出现一个特殊问题。从1995年开始,互信息已被证明是用于多模态图像配准的一种非常成功的距离度量。然而,互信息也有一些众所周知的缺点。其主要缺点是它已知是高度非凸的,并且通常有许多局部最大值。这一观察促使我们寻找一种更适合优化且同样能够处理多模态图像的不同图像相似性度量。在这项工作中,我们研究了一种基于归一化梯度的替代距离度量,并将其性能与互信息进行比较。我们将新的距离度量称为归一化梯度场(NGF)。