Abstract

Synthetic aperture sonar (SAS) is a technique that acquires an underwater image by synthesizing the signal received by the sonar as it moves. By forming a synthetic aperture, the sonar overcomes physical limitations and shows superior resolution when compared with use of a side-scan sonar, which is another technique for obtaining underwater images. Conventional SAS algorithms require a high concentration of sampling in the time and space domains according to Nyquist theory. Because conventional SAS algorithms go through matched filtering, side lobes are generated, resulting in deterioration of imaging performance. To overcome the shortcomings of conventional SAS algorithms, such as the low imaging performance and the requirement for high-level sampling, this paper proposes SAS algorithms applying compressive sensing (CS). SAS imaging algorithms applying CS were formulated for a single sensor and uniform line array and were verified through simulation and experimental data. The simulation showed better resolution than the ω-k algorithms, one of the representative conventional SAS algorithms, with minimal performance degradation by side lobes. The experimental data confirmed that the proposed method is superior and robust with respect to sensor loss.

Highlights

  • Synthetic aperture sonar (SAS) is a technique that repeatedly transmits and receives pulses while the sonar is moving and coherently synthesizes the received signals to obtain a high-resolution image [1,2,3]

  • Array for a uniform line array were simulated in tw cases

  • We proposed an algorithm that applies compressive sensing (CS) to a synthetic aperture sonar (SAS) under the assumption that the target distribution in water is sparse

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Summary

Introduction

Synthetic aperture sonar (SAS) is a technique that repeatedly transmits and receives pulses while the sonar is moving and coherently synthesizes the received signals to obtain a high-resolution image [1,2,3]. SAS signal processing techniques pass through a matched filter, side lobes are generated, resulting in the deterioration of image reconstruction performance [12,13]. This paper proposes SAS imaging algorithms that apply the compressive sensing (CS) framework to compensate for disadvantages associated with conventional SAS signal. In [29], a method that applies CS to SAS imaging is presented, which estimates the reflectivity function in the area of interest using all the given data. This study offers three main contributions: First, the proposed method (called the CS-SAS algorithm for simplicity) that shows better reconstruction performance compared to a conventional SAS algorithm.

SAS Geometry
Compressive
CS-SAS Algorithm for Single Sensor
CS-SAS Algorithm for Uniform Line Array
Results
Results for for Single
Locations
Simulation
Simulation for sensor
The algorithm accurately fetches
Even thesampling spatial sampling is reduced to a
Results for Uniform
11. Simulation
12. Simulation
Experimental
15. Results
Conclusions
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