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Mutually coherent structural representation for image registration through joint manifold embedding and alignment

机译:相互连贯的结构表示,用于通过联合流形嵌入和对齐进行图像配准

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In this paper, we introduce mutually coherent structural representations (McSR) for image registration which learns a mapping of local structural descriptors to create a unique scalar representation, which is similar across modalities. The McSR is learnt using joint alignment and embedding of Laplacian eigenmaps using modality-combination specific dense structural descriptors. The resulting alternate image representation offers richer structurally-driven information for registration while being invariant to inter-modal differences in intensities. The proposed formulation has been evaluated for robustness and registration error on standard multimodal brain image datasets. It is observed to demonstrate superior systematic recovery and performance over comparative simultaneous registration methods.
机译:在本文中,我们介绍了用于图像配准的相互一致的结构表示形式(McSR),该结构表示形式学习了局部结构描述符的映射关系以创建唯一的标量表示形式,该形式表示形式在所有模态中均相似。通过联合对齐和使用模态组合特定的密集结构描述符嵌入拉普拉斯特征图来学习McSR。产生的替代图像表示为配准提供了更丰富的结构驱动信息,而不会改变强度之间的模态差异。已对标准多模式脑图像数据集的鲁棒性和配准误差进行了评估。可以观察到,与相对应的同时注册方法相比,它具有出色的系统恢复能力和性能。

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