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A LOWER BOUND ON THE VARIANCE OF ALGEBRAIC ELLIPSOID-FITTING CENTER ESTIMATOR

机译:代数椭圆拟合中心估计的方差下界

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Ellipsoid fitting is a widely used technique in 3D shape modeling, which simultaneously estimate the center and orientation of 3D object. This paper explores the limits of performance for the ellipsoid-fitting center estimator. It is shown that the noise in the surface sample data can be approximated by a Gaussian distribution when the signal to noise ratio is high. The Cramer-Rao lower bound is applied to yield a bound on the variance of unbiased ellipsoid-fitting center estimator. The simulation results show that the bound is approachable by the center estimator developed from Bookstein's ellipsoid fitting method when the noise level is low.
机译:椭圆拟合是3D形状建模中广泛使用的技术,可同时估计3D对象的中心和方向。本文探讨了椭球拟合中心估计器的性能极限。结果表明,当信噪比较高时,表面样本数据中的噪声可以通过高斯分布来近似。应用Cramer-Rao下界产生无偏椭球拟合中心估计量方差的界。仿真结果表明,当噪声水平较低时,采用Bookstein椭圆拟合方法开发的中心估计量可以逼近边界。

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