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Sampling and Reconstruction of Shapes With Algebraic Boundaries

机译:具有代数边界的形状的采样和重构

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We present a sampling theory for a class of binary images with finite rate of innovation (FRI). Every image in our model is the restriction of 1{p≤0} to the image plane, where 1 denotes the indicator function and p is some real bivariate polynomial. This particularly means that the boundaries in the image form a subset of an algebraic curve with the implicit polynomial p. We show that the image parameters-i.e., the polynomial coefficients'satisfy a set of linear annihilation equations with the coefficients being the image moments. The inherent sensitivity of the moments to noise makes the reconstruction process numerically unstable and narrows the choice of the sampling kernels to polynomial reproducing kernels. As a remedy to these problems, we replace conventional moments with more stable generalized moments that are adjusted to the given sampling kernel. The benefits are threefold: 1) it relaxes the requirements on the sampling kernels; 2) produces annihilation equations that are robust at numerical precision; and 3) extends the results to images with unbounded boundaries. We further reduce the sensitivity of the reconstruction process to noise by taking into account the sign of the polynomial at certain points, and sequentially enforcing measurement consistency. We consider various numerical experiments to demonstrate the performance of our algorithm in reconstructing binary images, including low to moderate noise levels and a range of realistic sampling kernels.
机译:我们提出了一类具有有限创新率(FRI)的二值图像的采样理论。我们模型中的每个图像都是对图像平面的限制1 {p≤0},其中1表示指标函数,p是一些实际的二元多项式。这尤其意味着图像中的边界形成了具有隐式多项式p的代数曲线的子集。我们表明图像参数-即多项式系数满足一组线性an灭方程,其中系数为图像矩。矩对噪声的固有敏感性使重建过程在数值上不稳定,并使采样内核的选择范围缩小到多项式再现内核。为了解决这些问题,我们用适合于给定采样内核的更稳定的广义矩代替了常规矩。好处有三方面:1)放宽了对采样内核的要求; 2)产生an灭方程,其数值精度高。和3)将结果扩展到具有无边界边界的图像。通过考虑某些点上多项式的符号,并依次强制执行测量一致性,我们进一步降低了重建过程对噪声的敏感性。我们考虑了各种数值实验,以证明我们的算法在重建二进制图像中的性能,包括低到中等的噪声水平以及一系列实际的采样内核。

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