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Automatic Initialization for 3D Bone Registration

机译:自动初始化3D骨注册

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摘要

In image-guided bone surgery, sample points collected from the surface of the bone are registered to the pre-operative CT model using well-known registration methods such as Iterative Closest Point (ICP). These techniques are generally very sensitive to the initial alignment of the datasets. Poor initialization significantly increases the chances of getting trapped local minima. In order to reduce the risk of local minima, the registration is manually initialized by locating the sample points close to the corresponding points on the CT model. In this paper, we present an automatic initialization method that aligns the sample points collected from the surface of pelvis with CT model of the pelvis. The main idea is to exploit a mean shape of pelvis created from a large number of CT scans as the prior knowledge to guide the initial alignment. The mean shape is constant for all registrations and facilitates the inclusion of application-specific information into the registration process. The CT model is first aligned with the mean shape using the bilateral symmetry of the pelvis and the similarity of multiple projections. The surface points collected using ultrasound are then aligned with the pelvis mean shape. This will, in turn, lead to initial alignment of the sample points with the CT model. The experiments using a dry pelvis and two cadavers show that the method can align the randomly dislocated datasets close enough for successful registration. The standard ICP has been used for final registration of datasets.
机译:在图像引导的骨外科手术中,使用众所周知的配准方法(如迭代最接近点(ICP))将从骨骼表面收集的样本点配准至术前CT模型。这些技术通常对数据集的初始对齐非常敏感。初始化不佳会大大增加陷入局部最小值的机会。为了降低局部极小值的风险,通过将样本点定位在CT模型上的相应点附近来手动初始化配准。在本文中,我们提出了一种自动初始化方法,该方法可以将从骨盆表面收集的采样点与骨盆的CT模型对齐。主要思想是利用由大量CT扫描产生的骨盆的平均形状作为指导初始对准的先验知识。所有注册的平均形状是恒定的,并有助于将特定于应用程序的信息包含到注册过程中。首先使用骨盆的两侧对称性和多个投影的相似性,将CT模型与平均形状对齐。然后将使用超声波收集的表面点与骨盆平均形状对齐。反过来,这将导致样本点与CT模型的初始对齐。使用干燥骨盆和两个尸体的实验表明,该方法可以将随机错位的数据集对齐到足够近的距离,以成功进行配准。标准ICP已用于数据集的最终注册。

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