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Medical Image Registration Based on Generalized N-dimensional Principal Component Analysis (GND-PCA) and Statistical Shape Deformation Model

机译:基于广义n维主成分分析(GND-PCA)和统计形状变形模型的医学图像登记

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This paper presents a fast and accurate image registration method for high dimensional images. The method uses a statistical shape deformation model to represent deformation fields which warp an individual image to a selected template image. The statistical shape deformation model is built by the generalized N-dimensional principal component analysis (GND-PCA) with training samples of deformation fields, which deform the individual sample images to the selected template image. The statistical deformation model can be built with fewer samples and can represent individual deformation fields effectively by a small number of parameters, which is used to rapidly estimate the deformation field between the template image and a new individual image. The estimated deformation field is used to warp the individual image, and the warped image is close to the template image. The shape difference between the warped individual image and the template is estimated by an image registration algorithm, e.g., HAMMER. The proposed method has been validated by 3D MR brain images.
机译:本文介绍了高维图像的快速准确的图像配准方法。该方法使用统计形状变形模型来表示将单个图像扭曲到所选模板图像的变形字段。统计形状变形模型由具有训练样本的通用N维主成分分析(GND-PCA)构建,其变形场的训练样本,其将各个样本图像变形到所选择的模板图像。统计变形模型可以用较少的样本构建,并且可以通过少量参数有效地表示各个变形字段,其用于快速估计模板图像和新的单个图像之间的变形场。估计的变形字段用于翘曲各个图像,并且翘曲图像接近模板图像。通过图像配准算法,例如锤估计翘曲的单个图像和模板之间的形状差异。所提出的方法已被3D MR脑图像验证。

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