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Robust and Scalable Interactive Freeform Modeling of High Definition Medical Images

机译:高清晰度医学图像的鲁棒和可扩展的交互式自由形式建模

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Whole-body anatomically correct high-resolution 3D medical images are instrumental for physical simulations. Unfortunately, only a limited number of acquired datasets are available and the scope of possible applications is limited by the patient's posture. In this paper, we propose an extension of the interactive cage-based deformation pipeline VoxMorph [1], for labeled voxel grids allowing to efficiently explore the space of plausible poses while preserving the tissues' internal structure. We propose 3 main contributions to overcome the limitations of this pipeline: (i) we improve its robustness by proposing a deformation diffusion scheme, (ii) we improve its accuracy by proposing a new error-metric for the refinement process of the motion adaptive structure, (iii) we improve its scalability by proposing an out-of-core implementation. Our method is easy to use for novice users, robust and scales up to 3D images that do not fit in memory, while offering limited distortion and mass loss. We evaluate our approach on postured whole-body segmented images and present an electro-magnetic wave exposure study for human-waves interaction simulations.
机译:全身解剖学正确的高分辨率3D医学图像对于物理模拟非常有用。不幸的是,只有有限数量的采集数据集可用,并且可能的应用范围受到患者姿势的限制。在本文中,我们提出了基于交互式笼形变形管道VoxMorph [1]的扩展,用于标记的体素网格,可以有效地探索合理的姿势空间,同时保留组织的内部结构。我们提出了三个主要的建议来克服该管道的局限性:(i)通过提出变形扩散方案来提高其鲁棒性;(ii)通过为运动自适应结构的精炼过程提出新的误差度量来提高其准确性。 ,(iii)我们提出了核心外的实施方案,以提高其可扩展性。我们的方法易于新手使用,功能强大,可缩放至不适合内存的3D图像,同时提供有限的失真和质量损失。我们评估我们的姿势全身分割图像的方法,并提出了电磁波暴露研究的人波相互作用模拟。

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