A Fast Broadband Beamspace Transformation
Nakul Singh, Coleman DeLude, Mark Davenport, Justin Romberg

TL;DR
The paper introduces a computationally efficient broadband multi-beamforming method called fast beamspace transformation, which scales well with sensor number and outperforms traditional delay-and-sum beamformers.
Contribution
It proposes a novel algorithm that performs broadband beamforming efficiently using a non-uniform Fourier transform and Toeplitz system solving, with superior computational scaling.
Findings
Algorithm scales linearly with sensors, with logarithmic factors.
Outperforms delay-and-sum beamformers in computational efficiency.
Numerical experiments confirm high accuracy and efficiency.
Abstract
We present a new computationally efficient method for multi-beamforming in the broadband setting. Our "fast beamspace transformation" forms beams from sensor outputs using a number of operations per sample that scales linearly (to within logarithmic factors) with when . While the narrowband version of this transformation can be performed efficiently with a spatial fast Fourier transform, the broadband setting requires coherent processing of multiple array snapshots simultaneously. Our algorithm works by taking samples off of each of sensors and encoding the sensor outputs into a set of coefficients using a special non-uniform spaced Fourier transform. From these coefficients, each beam is formed by solving a small system of equations that has Toeplitz structure. The total runtime complexity is operations per sample, exhibiting…
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