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Reconstruction of signals in Lp()-space by generalized sampling series based on linear combinations of B-splines

机译:基于B样条线性组合的广义采样序列重构Lp()-空间中的信号

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In her plenary lecture [Daubechies, I., 2005, Redundancy and robust A/D and D/A conversion (see ref. 28). SampTA 05, Sampling Theory and Applications. Proceedings of International Workshop, Samsun, Turkey, 2005 (Samsun: Ondokuz Mayis University, Department of Mathematics), p. 18.] at the workshop SampTa 05, Samsun, Turkey, July 2005, Daubechies, Princeton, presented three major reasons as to why the classical sampling theorem was fully impractical for real-life signal processing. One needs infinitely many samples extended over the whole real axis, the sinc-kernel decaying much too slowly, and band limitation is a too restrictive assumption. This paper presents an approach to overcome these difficulties, which actually began to develop at Aachen 1977. The sinc-function is replaced by certain simple linear combinations of B-splines, only a finite number of samples need be available. This approach can be used to process arbitrarily continuous and even discontinuous signals. Best possible error estimates in terms of the Lp-average modulus of smoothness are presented. Three typical examples exhibiting the various problems involved are worked out in detail.
机译:在她的全体演讲中[Daubechies,I.,2005,冗余和强大的A / D和D / A转换(请参见参考资料28)。 SampTA 05,采样理论与应用。国际研讨会论文集,土耳其萨姆松,2005年(萨姆松:Ondokuz Mayis大学,数学系),第3页。 [18.]在2005年7月于土耳其Samsun举行的SampTa 05研讨会上,普林斯顿的Daubechies提出了三个主要原因,说明了经典采样定理对于现实生活中的信号处理是完全不切实际的。一个人需要在整个实轴上无限地扩展许多采样,sinc-kernel的衰减太慢,并且带宽限制是一个过于严格的假设。本文提出了一种克服这些困难的方法,该方法实际上是在1977年亚琛开始发展的。用正弦函数代替某些简单的B样条线性组合,只需要有限数量的样本即可。这种方法可用于处理任意连续甚至不连续的信号。给出了根据Lp平均平滑度的最佳可能误差估计。展示了涉及到各种问题的三个典型示例。

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