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Exact Local Reconstruction Algorithms for Signals with Finite Rate of Innovation

机译:具有有限创新率的信号的确切本地重建算法

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Consider the problem of sampling signals which are not bandlimited, but still have a finite number of degrees of freedom per unit of time, such as, for example, piecewise polynomial or piecewise sinusoidal signals, and call the number of degrees of freedom per unit of time the rate of innovation. Classical sampling theory does not enable a perfect reconstruction of such signals since they are not bandlimited. In this paper, we show that many signals with finite rate of innovation can be sampled and perfectly reconstructed using kernels of compact support and a local reconstruction algorithm. The class of kernels that we can use is very rich and includes functions satisfying strang-fix conditions, exponential splines and functions with rational Fourier transforms. Extension of such results to the 2-dimensional case are also discussed and an application to image super-resolution is presented
机译:考虑未带有带带限制的采样信号的问题,但仍然具有每单位时间的有限数量的自由度,例如分段多项式或分段正弦信号,并称之为每单位自由度 时间创新速度。 古典采样理论不能通过不完全重建这种信号,因为它们没有带限制。 在本文中,我们表明,可以使用紧凑的支持和局部重建算法来采样和完全重建具有有限创新速率的许多信号。 我们可以使用的内核类非常丰富,包括满足Strang-Fix的条件,指数样条和具有合理傅里叶变换的功能的功能。 还讨论了将这种结果扩展到二维案例,并介绍了图像超分辨率的应用

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