2021
DOI: 10.48550/arxiv.2107.10004
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Deep Iterative 2D/3D Registration

Srikrishna Jaganathan,
Jian Wang,
Anja Borsdorf
et al.

Abstract: Deep Learning-based 2D/3D registration methods are highly robust but often lack the necessary registration accuracy for clinical application. A refinement step using the classical optimization-based 2D/3D registration method applied in combination with Deep Learningbased techniques can provide the required accuracy. However, it also increases the runtime. In this work, we propose a novel Deep Learning driven 2D/3D registration framework that can be used end-to-end for iterative registration tasks without relyi… Show more

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