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Super-Resolution From Unregistered and Totally Aliased Signals Using Subspace Methods

机译:使用子空间方法对未注册和完全混淆的信号进行超分辨率

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摘要

In many applications, the sampling frequency is limited by the physical characteristics of the components: the pixel pitch, the rate of the analog-to-digital (A/D) converter, etc. A low-pass filter is usually applied before the sampling operation to avoid aliasing. However, when multiple copies are available, it is possible to use the information that is inherently present in the aliasing to reconstruct a higher resolution signal. If the different copies have unknown relative offsets, this is a nonlinear problem in the offsets and the signal coefficients. They are not easily separable in the set of equations describing the super-resolution problem. Thus, we perform joint registration and reconstruction from multiple unregistered sets of samples. We give a mathematical formulation for the problem when there are $M$ sets of $N$ samples of a signal that is described by $L$ expansion coefficients. We prove that the solution of the registration and reconstruction problem is generically unique if $MNgeq L+M-1$. We describe two subspace-based methods to compute this solution. Their complexity is analyzed, and some heuristic methods are proposed. Finally, some numerical simulation results on one- and two-dimensional signals are given to show the performance of these methods.
机译:在许多应用中,采样频率受到组件物理特性的限制:像素间距,模数(A / D)转换器的速率等。通常在采样之前应用低通滤波器操作时避免混叠。但是,当有多个副本可用时,可以使用混叠中固有存在的信息来重建更高分辨率的信号。如果不同的副本具有未知的相对偏移,则这是偏移和信号系数方面的非线性问题。在描述超分辨率问题的方程组中,它们不容易分离。因此,我们从多个未注册的样本集中执行联合注册和重建。当存在由$ L $扩展系数描述的信号的$ M $组$ N $个样本时,我们给出问题的数学公式。我们证明,如果$ MNgeq L + M-1 $,则注册和重构问题的解决方案通常是唯一的。我们描述了两种基于子空间的方法来计算该解决方案。分析了它们的复杂性,并提出了一些启发式方法。最后,对一维和二维信号进行了数值模拟,结果表明了这些方法的性能。

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