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Robust Registration of Multi-modal Medical Images Using Huber’s Criterion

机译:使用Huber的标准强大的多模态医学图像注册

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Registration of multi-modal medical images is an essential pre-processing step, for example, for fusion or image guided-interventions. However, the alignment process is prone to high variability in tissue appearance between modalities, in addition to local intensity variations and artefacts. This work introduces a robust multi-modal registration approach that mitigates the undesirable effect of such variability. Robustness is achieved using Huber's loss function for the data fidelity and regularization terms. We propose a novel approach using Huber's criterion, which enables a jointly convex estimation of the motions and the associated scale parameters. We formulate the problem as a complex 2D transformation estimation and investigate a robust total-variation smoothing, as well as a dictionary learning-based data fidelity term. Experiments are conducted using two datasets of multi-contrast MR brain images.
机译:多模态医学图像的登记是一个基本的预处理步骤,例如,用于融合或图像导向干预。 然而,除了局部强度变化和人工制品之外,对准过程易于在模态之间的组织外观方面的高度变化。 这项工作介绍了一种强大的多模态登记方法,可减轻这种可变性的不良影响。 利用Huber的数据保真度和正则化术语实现了稳健性。 我们提出了一种利用Huber的标准的新方法,这使得能够共同凸起估计动作和相关规模参数。 我们将问题与复杂的2D转换估计一起制定,并调查稳健的总变化平滑,以及基于词典的数据保真术语。 使用两种多造影MR脑图像的数据集进行实验。

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