亚奈奎斯特采样带通分析信号处理的去噪技术

V. Lesnikov, T. Naumovich, A. Chastikov
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引用次数: 3

摘要

根据Nyquist-Shannon采样定理在宽频带实时采样信号的数字处理是基于对模数转换器和处理器的极高性能要求。使用亚奈奎斯特采样,处理发生在较低的采样率,但这引起了混叠的问题。本文采用多通道多频采样的方法,解决了因任意程度混叠而失真的复杂分析信号的重建问题。在这种情况下,要采样的信号被馈送到并行工作的模数转换器的N个输入端。每个信道提供确定性等距采样,但每个信道的采样率不同。每个通道上的采样率小于带通采样所需的采样定理。在这种情况下,信道中出现了N阶的混叠,其中在某些频率上存在(N+1)个周期性重复的频谱混叠。在实现该方法时,将待处理的分析带通信号的频带划分为具有相同宽度的子带。信道采样率是子带宽的倍数。对于所有信道,建立了将子带中测量的混叠失真频谱值与混叠子带中未知期望频谱值连接起来的方程组。然而,对于解析型带通信号,这些方程无法求解。因此,在不改变某些信道的采样率的情况下,采用了一种基于收窄处理频带的技术。本文给出了二阶和三阶混叠情况下带通分析信号的频谱重建实例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dealiasing Technique for Processing of Sub-Nyquist Sampled Bandpass Analytic Signals
Digital processing of signals sampled according to the Nyquist-Shannon sampling theorem in real time in a wide frequency band is based on extremely high-performance requirements of both analog-to-digital converters and processors. With sub-Nyquist sampling, processing occurs at lower sampling rates, but this raises the problem of aliasing. In this paper, the problem of reconstructing complex analytical signals distorted by aliasing of arbitrary degree is solved using multichannel multifrequency sampling. In this case, the signal to be sampled is fed to the N inputs of parallel-working analog-to-digital converters. Deterministic equidistant sampling is provided for each channel, but the sampling rates are different for each channel. The sampling rate on each channel is less than the sampling theorem required for bandpass sampling. In this case, aliasing of the Nth order occurs in the channels, in which at some frequencies there is an overlap of (N+1) periodically repeating aliases of the spectrum. When implementing the proposed approach, the frequency band of the analytical bandpass signal to be processed is divided into sub-bands with the same width. Channel sampling rates are multiples of the sub-band width. For all channels, systems of equations are drawn up that connect the measured aliasing-distorted spectrum values in the sub-bands with the unknown desired spectrum values in the alias sub-bands. However, these equations cannot be solved for analytic bandpass signals. Therefore, a technique is applied based on narrowing the processed frequency band in some channels without changing the sampling rates in them. The paper presents examples of spectrum reconstruction of a bandpass analytic signal for cases of aliasing of the second and third orders.
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