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EFFICIENT ALGORITHMS FOR FINDING THE CENTERS OF CONICS AND QUADRICS IN NOISY DATA

机译:在噪声数据中确定二次曲线和二次曲线中心的有效算法

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We present efficient algorithms for finding the centers of conics and quadrics of known parameters in noisy or scarce data. The problem arises in applications where a conic or quadric of known parameters, such as a circle of known radius, is extracted from a scene or part. Common applications include locating an object in a noisy scene, and determining the correspondence between a manufactured part and its intended shape. Although the original problem is nonlinear and usually requires an iterative method for its solution, we reduce it to the well-known problem of minimizing a nonhomogeneous quadratic expression on the unit sphere. In the case of closed conics and quadrics, such as circles, ellipses, spheres, and ellipsoids, we obtain the solution in just one iteration and no starting estimate is required. Furthermore, we prove that the solution obtained by our method is the global minimum solution to the problem. For hyperbolas and hyperboloids, we describe a Gauss-Seidel algorithm, for which we give a Lyapunov type proof of convergence. We also describe an initialization algorithm to obtain starting estimates close to the global minimum solution. Furthermore, every iteration of this algorithm satisfies all constraints. We give numerical results showing a rapid convergence of the algorithm in just two iterations. We apply our method in a metrology application to accurately determine the cutting radius of a tool. We compare the results of our method in just one iteration for closed conics and two iterations for hyperbolas, against multiple iterations of Newton's method. Our comparison suggests that they are similar. (C) 1997 Pattern Recognition Society. [References: 21]
机译:我们提出了有效的算法,可在嘈杂或稀缺的数据中找到已知参数的圆锥和二次曲面的中心。从场景或零件中提取已知参数的圆锥或二次曲面(例如已知半径的圆)的应用中会出现问题。常见的应用程序包括在嘈杂的场景中定位对象,并确定制造的零件与其预期形状之间的对应关系。尽管原始问题是非线性的,通常需要使用迭代方法来求解,但我们将其简化为最小化单位球面上非均方二次表达式的众所周知的问题。对于封闭的圆锥和二次曲面(例如圆形,椭圆形,球形和椭圆形),我们只需一次迭代即可获得解,而无需初始估计。此外,我们证明了通过我们的方法获得的解是该问题的全局最小解。对于双曲线和双曲面,我们描述了一种高斯-塞德尔算法,为此我们给出了Lyapunov型收敛性的证明。我们还描述了一种初始化算法,以获取接近全局最小解的起始估计。此外,该算法的每次迭代都满足所有约束。我们给出的数值结果表明,该算法只需两次迭代即可快速收敛。我们将我们的方法应用于计量学应用中,以准确确定刀具的切削半径。对于牛顿法的多次迭代,我们仅对封闭圆锥曲线进行一次迭代,对双曲线进行两次迭代来比较方法的结果。我们的比较表明它们是相似的。 (C)1997模式识别学会。 [参考:21]

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