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A Geometric Construction of Multivariate Sinc Functions

机译:多元Sinc函数的几何构造

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We present a geometric framework for explicit derivation of multivariate sampling functions (sinc) on multidimensional lattices. The approach leads to a generalization of the link between sinc functions and the Lagrange interpolation in the multivariate setting. Our geometric approach also provides a frequency partition of the spectrum that leads to a nonseparable extension of the 1-D Shannon (sinc) wavelets to the multivariate setting. Moreover, we propose a generalization of the Lanczos window function that provides a practical and unbiased approach for signal reconstruction on sampling lattices. While this framework is general for lattices of any dimension, we specifically characterize all 2-D and 3-D lattices and show the detailed derivations for 2-D hexagonal body-centered cubic (BCC) and face-centered cubic (FCC) lattices. Both visual and numerical comparisons validate the theoretical expectations about superiority of the BCC and FCC lattices over the commonly used Cartesian lattice.
机译:我们提出了一个几何框架,用于在多维格上显式推导多元采样函数(sinc)。该方法导致在多元设置中对Sinc函数和Lagrange插值之间的链接进行了概括。我们的几何方法还提供了频谱的频率划分,从而将1-D Shannon(sinc)小波不可分离地扩展到多元设置。此外,我们提出了Lanczos窗函数的一般化,它为采样点阵上的信号重构提供了一种实用且无偏见的方法。尽管此框架适用于任何尺寸的晶格,但我们专门描述了所有2-D和3-D晶格的特性,并显示了2-D六角形体心立方(BCC)和面心立方(FCC)晶格的详细推导。视觉和数值比较均验证了BCC和FCC晶格优于常用笛卡尔晶格的理论期望。

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