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Target Registration Error for Rigid Shape-based Registration with Heteroscedastic Noise

机译:基于刚性形状的异方差噪声配准的目标配准错误

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We propose an analytic equation for approximating expected root mean square (RMS) target registration error (TRE) for rigid shape-based registration where measured noisy data points are matched to a rigid shape. The noise distribution of the data points is assumed to be zero-mean, independent, and non-identical; i.e., the noise covariance may be different for each data point. The equation was derived by extending a previously published spatial stiffness model of registration. The equation was validated by performing registration experiments with both synthetic registration data and data collected using an optically tracked pointing stylus. The synthetic registration data were generated from the surface of an ellipsoid. The optically tracked data were collected from three plastic replicas of human radii and registered to isosurface models of the radii computed from CT scans. Noise covariances for the data points were computed by considering the pose of the tracked stylus, the positions of the individual fiducial markers on the stylus coordinate reference frame, and the calibrated position of the stylus tip; these quantities and an estimate of the fiducial localization covariance of the tracking system were used as inputs to a previously published algorithm for estimating the covariance of TRE for point-based (fiducial) registration. Registration simulations were performed using a modified version of the iterated closest point algorithm and the resulting RMS TREs were compared to the values predicted by our analytic equation.
机译:我们提出了一个解析方程,用于近似估计基于刚性形状的配准的预期均方根(RMS)目标配准误差(TRE),其中已测量的嘈杂数据点与刚性形状匹配。数据点的噪声分布假定为零均值,独立且不相同;即,每个数据点的噪声协方差可能不同。通过扩展先前发布的配准空间刚度模型来推导该方程。通过使用合成配准数据和使用光学跟踪的指示笔收集的数据进行配准实验来验证该方程式。合成配准数据是从椭球表面生成的。光学跟踪的数据是从人类半径的三个塑料复制品中收集的,并记录到通过CT扫描计算出的半径的等值面模型中。数据点的噪声协方差是通过考虑跟踪笔的姿势,笔基准坐标系上各个基准标记的位置以及笔尖的校准位置来计算的;这些量和跟踪系统的基准定位协方差的估计用作先前发布的算法的输入,该算法用于估计基于点(基准)配准的TRE协方差。使用迭代最近点算法的修改版本执行配准模拟,并将所得的RMS TRE与我们的解析方程预测的值进行比较。

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