Non-Asymptotic Performance Analysis of DOA Estimation Based on Real-Valued Root-MUSIC
By: Junyang Liu , Weicheng Zhao , Qingping Wang and more
Potential Business Impact:
Improves radar's ability to pinpoint where signals come from.
This paper presents a systematic theoretical performance analysis of the Real-Valued root-MUSIC (RV-root-MUSIC) algorithm under non-asymptotic conditions. A well-known limitation of RV-root-MUSIC is the estimation ambiguity caused by mirror roots, which are typically suppressed using conventional beamforming (CBF). By leveraging the equivalent subspace constructed through the conjugate extension method and exploiting the equivalence of perturbations for true and mirror roots, this work provides a comprehensive study of three key aspects: noise subspace perturbation, true-root perturbation, and mirror-root perturbation. A statistical model is established, and generalized perturbation expressions are derived. Monte Carlo simulations confirm the correctness and effectiveness of the theoretical results. The analysis provides a rigorous foundation for parameter optimization in Direction-of-Arrival (DOA) estimation, with applications in radar, wireless communications, and intelligent sensing.
Similar Papers
Non-Asymptotic Performance Analysis of DOA Estimation Based on Real-Valued Root-MUSIC
Performance
Improves radar and sensing by fixing signal direction errors.
DoA Estimation using MUSIC with Range/Doppler Multiplexing for MIMO-OFDM Radar
Signal Processing
Finds many things even with few sensors.
DOA Estimation with Lightweight Network on LLM-Aided Simulated Acoustic Scenes
Sound
Helps microphones hear sounds from any direction.