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On Two Algorithms for Multi-Modality Image Registration Based on Gaussian Curvature and Application to Medical Images

机译:基于高斯曲率和应用于医学图像的多模态图像配准的两种算法

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摘要

Registration of multi-modal images is one of the challenging problems in image processing nowadays. In this paper, two novel non-rigid registration models are proposed for multi-modality images. In model 1, mutual information of the template and reference images is used as data fitting term with Gaussian curvature regularization. This approach may not give satisfactory results in noisy images or images having bias field. To overcome this drawback, model 2 is proposed which is based on normalized gradient of both template and reference images as a data fitting term instead of mutual information. To get best transformations, both the models are minimized by using Augmented Lagrangian Method. The proposed models can register multi-modality images without effecting edges and other important fine details and are also tested on various medical images like (T1-T2 MRI, PD weighted-T2 MRI) noisy and synthetic images. The proposed models are also tested on a well known free available Brainweb dataset, where they produced satisfactory results. From experimental results, it can be observed that normalized gradient field based model gives better results than mutual information based model. Comparison is done qualitatively and quantitatively through Jaccard Similarity Coefficient.
机译:多模态图像的注册是现在图像处理中的具有挑战性问题之一。本文提出了两种新的非刚性登记模型,用于多模态图像。在型号1中,模板和参考图像的互信息用作具有高斯曲率正则化的数据拟合项。这种方法可能不会在嘈杂的图像或具有偏置场的图像中提供令人满意的结果。为了克服该缺点,提出了模型2,其基于模板和参考图像的标准化梯度作为数据拟合项而不是相互信息。为了获得最佳转换,通过使用增强拉格朗日方法,这两个模型都最小化。所提出的模型可以在不影响边缘和​​其他重要细节的情况下注册多模态图像,并且还在各种医学图像上测试(T1-T2 MRI,PD加权T2 MRI)噪声和合成图像。拟议的模型也在众所周知的免费可用BrainWeb数据集上进行测试,在那里它们产生了令人满意的结果。从实验结果来看,可以观察到,归一化梯度场基础的模型提供比基于互信息的模型更好的结果。通过Jaccard相似系数来定性和定量地完成比较。

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