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Anatomic Surface Reconstruction from Sampled Point Cloud Data and Prior Models

机译:采样点云数据和先前模型的解剖表面重建

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摘要

In this paper, we propose an approach for reconstruction of an anatomic surface model from point cloud data using the Screened Poisson Surface Reconstruction algorithm, which requires a collection of points and their normal vectors. Various algorithms exist for estimating normal vectors for point cloud data; however, in this work we describe a novel approach to estimating the normal vectors from a high-resolution prior model. In many medical applications, a preoperative high-resolution scan is acquired for diagnostic and planning purposes, whereas intraoperative, lower fidelity imaging is utilized during the procedure. This approach assumes an already existing registration between intra-operatively acquired data and the preoperative model. We conducted simulation experiments to evaluate the effect of registration error, point sampling rate, and noise levels on the acquired point cloud data samples. In addition, we evaluated the effect of using both the closest point, as well as a neighborhood of closest points on the prior model for estimating the normal. Our results showed that surface reconstruction error increases with higher registration error; however, acceptable performance was achieved with clinically-acceptable registration error. In addition, the best reconstruction was obtained when estimating the normal using only the closest point on the prior model, as opposed to utilizing a neighborhood of points. When combining the effect of all factors (Gaussian sampling noise of zero mean and σ =1.8mm; Gaussian translational error of zero mean and σ=2.0mm; and Gaussian rotational error of zero mean and σ=3°) the overall RMS reconstruction error was 0.88±0.03mm.
机译:在本文中,我们提出了一种使用Screened Poisson Surface Reconstruction算法从点云数据重构解剖表面模型的方法,该算法需要点及其法向矢量的集合。存在各种算法来估计点云数据的法向矢量。然而,在这项工作中,我们描述了一种从高分辨率先验模型估计法向向量的新颖方法。在许多医疗应用中,出于诊断和计划目的,需要进行术前高分辨率扫描,而在术中采用术中低保真度成像。该方法假定术中采集的数据与术前模型之间已经存在配准。我们进行了仿真实验,以评估配准误差,点采样率和噪声水平对采集的点云数据样本的影响。此外,我们评估了在先前模型上使用最接近点以及最接近点的邻域来估计法线的效果。我们的结果表明,表面重建误差随着配准误差的增加而增加;但是,由于临床可接受的配准错误,获得了可接受的性能。另外,与仅利用点的邻域相反,仅使用现有模型上的最近点来估计法线时,可以获得最佳的重构。综合所有因素的影响(零均值和σ= 1.8mm的高斯采样噪声;零均值和σ= 2.0mm的高斯平移误差;零均值和σ= 3°的高斯旋转误差)时,整个RMS重构误差为0.88±0.03mm。

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