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Feature-based Alignment of Volumetric Multi-modal Images

机译:体积多模态图像的基于特征的比对

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摘要

This paper proposes a method for aligning image volumes acquired from different imaging modalities (e.g. MR, CT) based on 3D scale-invariant image features. A novel method for encoding invariant feature geometry and appearance is developed, based on the assumption of locally linear intensity relationships, providing a solution to poor repeatability of feature detection in different image modalities. The encoding method is incorporated into a probabilistic feature-based model for multi-modal image alignment. The model parameters are estimated via a group-wise alignment algorithm, that iteratively alternates between estimating a feature-based model from feature data, then realigning feature data to the model, converging to a stable alignment solution with few pre-processing or pre-alignment requirements. The resulting model can be used to align multi-modal image data with the benefits of invariant feature correspondence: globally optimal solutions, high efficiency and low memory usage. The method is tested on the difficult RIRE data set of CT, T1, T2, PD and MP-RAGE brain images of subjects exhibiting significant inter-subject variability due to pathology.
机译:本文提出了一种基于3D尺寸不变图像特征对齐从不同成像方式(例如MR,CT)获取的图像体积的方法。基于局部线性强度关系的假设,开发了一种用于编码不变特征几何形状和外观的新颖方法,为解决不同图像模态中特征检测的可重复性差提供了解决方案。编码方法并入了基于概率特征的多模态图像对齐模型中。模型参数是通过逐组对齐算法估算的,该算法在从特征数据估算基于特征的模型,然后将特征数据重新对齐到模型,迭代为稳定的对齐解决方案(几乎不需要预处理或预先对齐)之间反复进行交替要求。生成的模型可用于对齐多模式图像数据,并具有不变特征对应的优点:全局最佳解决方案,高效和低内存使用率。该方法在受试者的CT,T1,T2,PD和MP-RAGE脑图像的困难RIRE数据集上进行了测试,这些受试者由于病理原因表现出明显的受试者间差异。

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