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Modelling Shapes with Uncertainties: Higher Order Polynomials, Variable Bandwidth Kernels and non Parametric Density Estimation

机译:利用不确定性建模形状:高阶多项式,可变带宽内核和非参数密度估计

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In this paper, we introduce a new technique for shape modelling in the space of implicit polynomials. Registration consists of recovering an optimal one-to-one transformation of a higher order polynomial along with uncertainties measures that are determined according to the covariance matrix of the correspondences at the zero isosurface. In the modelling phase, these measures are used to weight the importance of the training samples phase according to a variable bandwidth non-parametric density estimation process. The selection of the most appropriate kernels to represent the training set is done through the maximum likelihood criterion. Excellent results for patterns of digits, related with the registration and the modelling aspects of our approach demonstrate the potentials of our method.
机译:在本文中,我们在隐式多项式空间中引入了一种形状建模的新技术。注册包括恢复高阶多项式的最佳一对一转换以及根据零Isosurface的对应协方差矩阵确定的不确定性测量。在建模阶段,这些措施用于重量训练样本相位的重要性,根据可变带宽非参数密度估计处理。选择最合适的内核来表示培训集是通过最大似然标准完成的。与数字的数字模式以及我们方法的建模方面相关的结果卓越的结果证明了我们方法的潜力。

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