Legg Philip A, Rosin Paul L, Marshall David, Morgan James E
School of Computer Science, Cardiff University, UK.
Med Image Comput Comput Assist Interv. 2009;12(Pt 1):616-23. doi: 10.1007/978-3-642-04268-3_76.
In this paper we present a novel method for performing image registration of different modalities. Mutual Information (MI) is an established method for performing such registration. However, it is recognised that standard MI is not without some problems, in particular it does not utilise spatial information within the images. Various modifications have been proposed to resolve this, however these only offer slight improvement to the accuracy of registration. We present Feature Neighbourhood Mutual Information (FNMI) that combines both image structure and spatial neighbourhood information which is efficiently incorporated into Mutual Information by approximating the joint distribution with a covariance matrix (c.f. Russakoff's Regional Mutual Information). Results show that our approach offers a very high level of accuracy that improves greatly on previous methods. In comparison to Regional MI, our method also improves runtime for more demanding registration problems where a higher neighbourhood radius is required. We demonstrate our method using retinal fundus photographs and scanning laser ophthalmoscopy images, two modalities that have received little attention in registration literature. Registration of these images would improve accuracy when performing demarcation of the optic nerve head for detecting such diseases as glaucoma.
在本文中,我们提出了一种用于执行不同模态图像配准的新方法。互信息(MI)是执行此类配准的一种既定方法。然而,人们认识到标准互信息并非没有一些问题,特别是它没有利用图像中的空间信息。已经提出了各种修改方法来解决这个问题,然而这些方法只是对配准精度有轻微的提高。我们提出了特征邻域互信息(FNMI),它结合了图像结构和空间邻域信息,并通过用协方差矩阵近似联合分布(参见Russakoff的区域互信息)有效地将其纳入互信息中。结果表明,我们的方法提供了非常高的精度,比以前的方法有了很大的提高。与区域互信息相比,对于需要更高邻域半径的更苛刻的配准问题,我们的方法还提高了运行时间。我们使用视网膜眼底照片和扫描激光检眼镜图像来演示我们的方法,这两种模态在配准文献中很少受到关注。对这些图像进行配准将提高在进行视神经头划界以检测青光眼等疾病时的准确性。