Abstract

Compressive sensing can guarantee the recovery accuracy of suitably constrained signals by using sampling rates much lower than the Nyquist limit. This is a leap from signal sampling to information sampling. The measurement matrix is key to implementation but limited in the acquisition systems. This article presents the critical elements of the direct under-sampling—compressive sensing (DUS–CS) method, constructing the under-sampling measurement matrix, combined with a priori information sparse representation and reconstruction, and we show how it can be physically implemented using dedicated hardware. To go beyond the Nyquist constraints, we show how to design and adjust the sampling time of the A/D circuit and how to achieve low-speed random non-uniform direct under-sampling. We applied our method to data measured with different compression ratios (volume ratios of collected data to original data). It is shown that DUS-CS works well when the SNR is 3 dB, 0 dB, −3 dB, and −5 dB and the compression ratio is 50%, 20%, and 10%, and this is validated with both simulation and actual measurements. The method we propose provides an effective way for compressed sensing theory to move toward practical field applications that use underwater echo signals.

Highlights

  • The core of signal acquisition technology is the transformation of analog signals into digital signals

  • This paper studies the direct under-sampling compression sensing method from the perspective of theory and engineering implementation

  • The direct under-sampling compressive sensing (DUS-CS) method is proposed based on the theory of compressive sensing and the combination of the characteristics of echo signals with the implementation of direct under-sampling

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Summary

Introduction

The core of signal acquisition technology is the transformation of analog signals into digital signals. The Nyquist sampling theorem [1,2] forms the critical basis of modern approaches to signal sampling and processing; it requires that the sampling frequency is greater or equal to twice the highest frequency of the effective signal, avoiding aliasing. In this way, the sampled signal can contain the information of the original signal and can be restored without distortion. As signal frequency and bandwidth increase in modern technology (up to MHz rates for some sonars), the Nyquist sampling rate increases linearly This makes the amount of data increase dramatically.

Basic Theory of Compressive Sensing
Direct Under-Sampling Compressive Sensing Method
Method
Sparse representation method incorporating prior information
Reconstruction method of block sparse orthogonal matching pursuit
Design
Data Acquisition
Findings
Conclusions

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