Abstract

Two-dimensional Underdetermined DOA Estimation of Quasi-stationary Signals via Sparse Bayesian Learning

Highlights

  • Direction of arrival (DOA) estimation is an important problem in array signal processing, which is widely used in radar, sonar, wireless communication and seismic sensing

  • This paper studies the 2-D DOA estimation of Quasi-stationary signals (QSS) in the context of sparse representation (SR) framework

  • The Khatri-Rao transform is applied to the uniform circular array (UCA) data model, which makes that the virtual array aperture of UCA is extended, so that the proposed method has the ability to estimate more signals than number of sensors

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Summary

Introduction

Direction of arrival (DOA) estimation is an important problem in array signal processing, which is widely used in radar, sonar, wireless communication and seismic sensing. Though [8] has proposed DOA estimation of QSS based on the UCA, it assumes that each signal is located at a fixed and known elevation angle. It is the one-dimensional (1-D) DOA estimation in essence. Subspace-based methods proposed in [6] can be directly utilized to estimate the 2-D DOAs of QSS, its estimation performance may deteriorate significantly in low SNR or small snapshots. IM denotes the M M identity matrix and diag( ) is a diagonal matrix composed of the elements of a column vector

Khatri-Rao Transform
Noise and Sparse Signal Model
Bayesian Inference
Simulation and Results
DOA Estimation Precision of Different Methods
Angular Resolution Comparison
Conclusion

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