A Lanczos-based Krylov subspace method approximates extreme eigenvalues for adaptive diagonal loading, matching exact EVD performance for white noise gain control in beamforming at reduced cost.
Adaptive Diagonal Loading for Norm Constrained Beamforming
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abstract
Reliable adaptive beamforming is critical for large microphone arrays operating in highly dynamic acoustic environments. In scenarios characterized by fast-moving talkers and interferers, the available sample support for estimating the spatial correlation matrix is often snapshot-deficient. This deficiency, coupled with array imperfections, degrades the White Noise Gain (WNG), leading to severe target signal cancellation. To ensure stable and robust beamforming, we propose a novel adaptive diagonal loading method that guarantees the WNG remains strictly within specified bounds. By leveraging the Kantorovich inequality, we map the desired WNG to a strict upper bound on the condition number of the correlation matrix. Furthermore, we present three estimation techniques for the adaptive loading level, ranging from trace-based bounding to exact eigenvalue decomposition, offering scalable computational complexities of $\mathcal{O}(M)$, $\mathcal{O}(M^2)$, and $\mathcal{O}(M^3)$. Our approach demonstrates highly stable beamforming under fast-changing interference.
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Adaptive Diagonal Loading using Krylov Subspaces for Robust Beamforming
A Lanczos-based Krylov subspace method approximates extreme eigenvalues for adaptive diagonal loading, matching exact EVD performance for white noise gain control in beamforming at reduced cost.