P-BOOST: Parallel Boosting of Optimal Narrow-Band Direction of Arrival Estimators
Elio D. Di Claudio, Raffaele Parisi, Giovanni Jacovitti

TL;DR
P-BOOST is a parallel boosting scheme that enhances the initialization of ML and sparse estimators for narrow-band direction of arrival, especially in challenging coherent and noisy environments.
Contribution
It introduces a novel parallel boosting method using generalized MUSIC solutions to improve initial estimates for ML and sparse estimators in array signal processing.
Findings
Improves estimation accuracy in low SNR conditions.
Provides reliable coarse estimates for coherent sources.
Highly parallel dataflow suitable for remote sensing applications.
Abstract
Optimal Maximum Likelihood (ML), narrow-band direction finding cannot be easily initialized in coherent and low signal to noise ratio environments. Sparse under-determined solvers are considered as viable solutions to this problem, since they drastically reduce the dimensionality of the search space by exploiting the array model sparseness. However, because of quantized locations, conventional sparse solvers present some ambiguity problems. In this work, we propose a novel boosting scheme for ML-type estimators, referred to as Parallel BOOSTer (P-BOOST), where a set of generalized MUSIC solutions provides pre-estimates of the directions and the number of coherent paths for arbitrary sensor array geometry and noise covariance. P-BOOST delivers improved and reliable coarse parameter estimates to a further ML or sparse optimization stage even in coherent and/or high noise scenarios.…
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Taxonomy
TopicsSpeech and Audio Processing · Direction-of-Arrival Estimation Techniques · Indoor and Outdoor Localization Technologies
