Hybrid Beamforming for Active Sensing using Sparse Arrays
Robin Rajam\"aki, Sundeep Prabhakar Chepuri, Visa Koivunen

TL;DR
This paper develops hybrid beamforming techniques for active sensing with sparse arrays, optimizing image quality while minimizing acquisition time and hardware costs, applicable to millimeter-wave and ultrasound imaging.
Contribution
It introduces algorithms for hybrid and analog beamforming with sparse arrays, including optimization methods and bounds, to achieve digital array resolution with fewer elements and front ends.
Findings
Hybrid sparse arrays can match fully digital array resolution.
Proposed algorithms effectively approximate optimal beamforming solutions.
Fewer front ends can achieve comparable imaging performance.
Abstract
This paper studies hybrid beamforming for active sensing applications, such as millimeter-wave or ultrasound imaging. Hybrid beamforming can substantially lower the cost and power consumption of fully digital sensor arrays by reducing the number of active front ends. Sparse arrays can be used to further reduce hardware costs. We consider phased arrays and employ linear beamforming with possibly sparse array configurations at both the transmitter and receiver. The quality of the acquired images is improved by adding together several component images corresponding to different transmissions and receptions. In order to limit the acquisition time of an image, we formulate an optimization problem for minimizing the number of component images subject to achieving a desired point spread function. Since this problem is not convex, we propose algorithms for finding approximate solutions in the…
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