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Beyond Nyquist: Efficient Sampling of Sparse Bandlimited Signals

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abstract

Wideband analog signals push contemporary analog-to-digital conversion systems to their performance limits. In many applications, however, sampling at the Nyquist rate is inefficient because the signals of interest contain only a small number of significant frequencies relative to the bandlimit, although the locations of the frequencies may not be known a priori. For this type of sparse signal, other sampling strategies are possible. This paper describes a new type of data acquisition system, called a random demodulator, that is constructed from robust, readily available components. Let K denote the total number of frequencies in the signal, and let W denote its bandlimit in Hz. Simulations suggest that the random demodulator requires just O(K log(W/K)) samples per second to stably reconstruct the signal. This sampling rate is exponentially lower than the Nyquist rate of W Hz. In contrast with Nyquist sampling, one must use nonlinear methods, such as convex programming, to recover the signal from the samples taken by the random demodulator. This paper provides a detailed theoretical analysis of the system's performance that supports the empirical observations.

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math.ST 1

years

2019 1

verdicts

UNVERDICTED 1

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Universality in Learning from Linear Measurements

math.ST · 2019-06-20 · unverdicted · novelty 7.0

The number of linear measurements for perfect structured signal recovery depends only on first and second moments of the measurement distribution, reducing analysis to the Gaussian case and yielding 3n measurements for PhaseLift phase retrieval.

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  • Universality in Learning from Linear Measurements math.ST · 2019-06-20 · unverdicted · none · ref 32 · internal anchor

    The number of linear measurements for perfect structured signal recovery depends only on first and second moments of the measurement distribution, reducing analysis to the Gaussian case and yielding 3n measurements for PhaseLift phase retrieval.