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Integrating computer vision and non-linear optimization for automated deformable registration of 3D medical images

机译:集成计算机视觉和非线性优化,以了解3D医学图像的自动可变形登记

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摘要

Deformable image registration (DIR), the process of estimating and applying non-linear transforms to spatially align sets of two or more images, is a challenging task with many important clinical applications including kinetic analysis, cancer treatment targeting, and evaluation of treatment response. Current techniques use non-linear optimizations only to reach a local minimum and not a globally optimal solution, limiting application to cases with small spatial displacements. Various semi-dense feature-based methods drawing inspiration from mammalian systems as the basis for 2D visual processing have been implemented for automated wide baseline registration and object detection applications with great success. Extension to the 3D case, which has been shown to enable highly efficient coarse global image search, in theory could be adapted also to allow precise semi-dense global optimization. The algorithm described in this paper, dubbed constrained robust affine feature transform (CRAFT), incorporates paradigms from various computer-vision techniques to combine aspects of the human visual pathway with proven non-linear optimization methods to automate general deformable registration with unprecedented robustness. This hybrid technique is able to estimate registration confidence and can serve as the basis of machine perception of medical images for machine learning.
机译:可变形的图像配准(DIR),估计和施加非线性变换的过程到空间对齐两种或多种图像集,是一种具有挑战性的任务,具有许多重要的临床应用,包括动力学分析,癌症治疗靶向和治疗反应的评估。目前的技术使用非线性优化仅达到局部最小,而不是全局最佳解决方案,限制在具有小空间位移的情况下的应用。从哺乳动物系统中汲取的各种基于半密度的特征的方法已经为2D视觉处理的基础,为自动化的广播基线注册和具有巨大成功的对象检测应用。在理论上,已经显示给3D情况的扩展,这已被证明可以使高效的粗略全局图像搜索进行调整,以便允许精确的半密集全局优化。本文描述的算法被称为受约束的鲁棒仿射特征变换(工艺),包括来自各种计算机视觉技术的范例,以将人类视觉途径的各个方面与经过验证的非线性优化方法组合,以自动化一般可变形的登记以前所未有的鲁棒性。这种混合技术能够估计登记信心,并可以作为机器学习的医学图像的机器感知的基础。

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