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arxiv: 1711.03847 · v1 · pith:6YDJLFQEnew · submitted 2017-11-08 · 📡 eess.SP · physics.data-an

Sparse Bayesian Learning for DOA Estimation in Heteroscedastic Noise

classification 📡 eess.SP physics.data-an
keywords noiseestimationheteroscedasticacrosssourcearraybayesiandata
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The paper considers direction of arrival (DOA) estimation from long-term observations in a noisy environment. In such an environment the noise source might evolve, causing the stationary models to fail. Therefore a heteroscedastic Gaussian noise model is introduced where the variance can vary across observations and sensors. The source amplitudes are assumed independent zero-mean complex Gaussian distributed with unknown variances (i.e. the source powers), inspiring stochastic maximum likelihood DOA estimation. The DOAs of plane waves are estimated from multi-snapshot sensor array data using sparse Bayesian learning (SBL) where the noise is estimated across both sensors and snapshots. This SBL approach is more flexible and performs better than high-resolution methods since they cannot estimate the heteroscedastic noise process. An alternative to SBL is simple data normalization, whereby only the phase across the array is utilized. Simulations demonstrate that taking the heteroscedastic noise into account improves DOA estimation.

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