论文标题

强大的无限抽样超越模特

Robust Unlimited Sampling Beyond Modulo

论文作者

Azar, Eyar, Mulleti, Satish, Eldar, Yonina C.

论文摘要

模拟数字转换器(ADC)的模拟充当模拟和数字域之间的桥梁。任何ADC的两个重要属性是采样率及其动态范围。对于频道信号,采样应高于奈奎斯特速率。还希望信号的动态范围应在ADC的动态范围内;否则,信号将被夹住。非线性操作员(例如Modulo或构成)可以在采样前使用以避免剪切。为了从非线性操作员的样品中恢复真实的信号,需要高采样率或对非线性操作的严格限制是施加的,在实践中,这两者都不可取。在本文中,我们提出了一个广义的柔性非线性操作员,该操作员有效地进行了采样。此外,通过仔细选择其参数,剪切,模块和限制,可以看作是特殊情况。我们表明,当采样奈奎斯特速率以上采样时,从提议的操作员的非线性样品中唯一地标识了带有限制的信号。此外,我们提出了一种鲁棒算法,以从非线性样品中恢复真实信号。我们表明,与现有算法相比,我们的算法在给定采样率,噪声水平和动态范围时恢复信号时具有最低的于点误差。我们的结果导致硬件设计较少,以解决动态范围问题,同时以最低的速度运行。

Analog to digital converters (ADCs) act as a bridge between the analog and digital domains. Two important attributes of any ADC are sampling rate and its dynamic range. For bandlimited signals, the sampling should be above the Nyquist rate. It is also desired that the signals' dynamic range should be within that of the ADC's; otherwise, the signal will be clipped. Nonlinear operators such as modulo or companding can be used prior to sampling to avoid clipping. To recover the true signal from the samples of the nonlinear operator, either high sampling rates are required or strict constraints on the nonlinear operations are imposed, both of which are not desirable in practice. In this paper, we propose a generalized flexible nonlinear operator which is sampling efficient. Moreover, by carefully choosing its parameters, clipping, modulo, and companding can be seen as special cases of it. We show that bandlimited signals are uniquely identified from the nonlinear samples of the proposed operator when sampled above the Nyquist rate. Furthermore, we propose a robust algorithm to recover the true signal from the nonlinear samples. We show that our algorithm has the lowest mean-squared error while recovering the signal for a given sampling rate, noise level, and dynamic range of the compared to existing algorithms. Our results lead to less constrained hardware design to address the dynamic range issues while operating at the lowest rate possible.

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