Fast deformable matching of 3D images over multiscale nested subspaces. Application to atlas-based MRI segmentation

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This paper presents a fast method to perform dense deformable matching of 3D images, applied to the registration of inter-subject brain MR images. To recover the complex morphological variations in neuroanatomy, the registration method uses a hierarchy of 3D deformations fields that are estimated, by minimizing a global energy function over a sequence of nested subspaces. The resulting deformable matching method shows low sensitivity to local minima and is able to track large non-linear deformations, with moderate computational load. The performances of the approach are assessed both on simulated 3D transformations and on a real data base of 3D brain MR images from different individuals. An application of the deformable image matching method to 3D atlas-based image segmentation is presented. This atlas-based segmentation is used at Strasbourg Hospital, in daily clinical applications, in order to extract regions of interest from 3D MR images of patients suffering from epilepsy.

论文关键词:3D hierarchical non-rigid image matching,Magnetic resonance imaging,3D brain atlas,Brain image segmentation

论文评审过程:Author links open overlay panelOlivierMusseaFabriceHeitzbPerson1EnvelopeJean-PaulArmspacha1

论文官网地址:https://doi.org/10.1016/S0031-3203(02)00324-2