Deep Networks for Direction-of-Arrival Estimation in Low SNR
Georgios K. Papageorgiou, Mathini Sellathurai, Yonina C. Eldar

TL;DR
This paper introduces a CNN-based method for robust direction-of-arrival estimation in extremely noisy environments, capable of predicting angles and the number of sources without prior parameter tuning.
Contribution
It presents a novel CNN architecture trained on multi-channel data for low-SNR DoA estimation, including joint source number inference, outperforming existing methods.
Findings
Enhanced robustness in low SNR conditions
Accurate off-grid angle estimation
Successful joint inference of source number
Abstract
In this work, we consider direction-of-arrival (DoA) estimation in the presence of extreme noise using Deep Learning (DL). In particular, we introduce a Convolutional Neural Network (CNN) that is trained from mutli-channel data of the true array manifold matrix and is able to predict angular directions using the sample covariance estimate. We model the problem as a multi-label classification task and train a CNN in the low-SNR regime to predict DoAs across all SNRs. The proposed architecture demonstrates enhanced robustness in the presence of noise, and resilience to a small number of snapshots. Moreover, it is able to resolve angles within the grid resolution. Experimental results demonstrate significant performance gains in the low-SNR regime compared to state-of-the-art methods and without the requirement of any parameter tuning. We relax the assumption that the number of sources is…
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