English

A Supervised Learning Framework for Joint Angle-of-Arrival and Source Number Estimation

Signal Processing 2021-11-19 v1

Abstract

Machine learning is a promising technique for angle-of-arrival (AOA) estimation of waves impinging a sensor array. However, the majority of the methods proposed so far only consider a known, fixed number of impinging waves, i.e., a fixed source number. This paper proposes a machine-learning-based estimator designed for the case when the source number is variable and hence unknown a priori. The proposed estimator comprises a framework of single-label classifiers. Each classifier predicts if waves are present within certain randomly selected segments of the array's field of view (FOV), resulting from discretising the FOV with a certain (FOV) resolution. The classifiers' predictions are combined into a probabilistic angle spectrum, whereupon the source number and the AOAs are estimated jointly by applying a probability threshold whose optimal level is learned from data. The estimator's performance is assessed using a new performance metric: the joint AOA estimation success rate. Numerical simulations show that for low SNR (-10 dB), a low FOV resolution (2^\circ) yields a higher success rate than a high resolution (1^\circ), whereas the opposite applies for mid (0 dB) and high (10 dB) SNRs. In nearly all simulations, except one at low SNR and a high FOV resolution, the proposed estimator outperforms the MUSIC algorithm if the maximum allowed AOA estimation error is approximately equal to (or larger than) the FOV resolution.

Keywords

Cite

@article{arxiv.2111.09686,
  title  = {A Supervised Learning Framework for Joint Angle-of-Arrival and Source Number Estimation},
  author = {Noud Kanters and Andrés Alayón Glazunov},
  journal= {arXiv preprint arXiv:2111.09686},
  year   = {2021}
}

Comments

Manuscript submitted to IEEE Trans. Signal Process. on November 1, 2021. 13 pages, 8 figures

R2 v1 2026-06-24T07:43:29.542Z