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Direction-of-Arrival Estimation in the Low-SNR Regime via a Denoising Autoencoder

机译:通过降噪自动编码器在低SNR情况下的到达方向估计

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The performance of covariance-based DoA estimation methods is limited in practice, particularly in the low signal-to-noise ratio (SNR) regime, due to the finite number of observations. In this work, we approach the direction-of-arrival (DoA) estimation in the presence of extreme noise from the Machine Learning (ML) perspective using Deep Learning (DL). First, we derive a relation between the covariance matrix and its sample estimate formulating the problem as a manifold learning task. Next, we train a denoising autoencoder (DAE) that predicts a Hermitian matrix, which is subsequently used for the DoA estimation. Experimental results demonstrate significant performance gains in terms of the root-mean-squared error (RMSE) in the low-SNR regime by using popular covariance-based DoA estimators. Nevertheless, the proposed method runs independent of the DoA estimator, opening up new possibilities for the testing of other methods as well. We believe that the proposed approach has several applications, ranging from wireless array sensors to microphones and transducers used in ultrasound imaging, where the operating environments are characterized by extreme noise.
机译:由于观察次数有限,基于协方差的DoA估计方法的性能在实践中受到限制,尤其是在低信噪比(SNR)方案中。在这项工作中,我们从深度学习(DL)的机器学习(ML)角度出发,在存在极端噪声的情况下,对到达方向(DoA)进行估算。首先,我们推导协方差矩阵与其样本估计之间的关系,从而将该问题表述为多种学习任务。接下来,我们训练预测厄米矩阵的去噪自动编码器(DAE),随后将其用于DoA估计。实验结果表明,通过使用流行的基于协方差的DoA估计器,在低SNR方案中,就均方根误差(RMSE)而言,性能得到了显着提高。然而,所提出的方法独立于DoA估计器运行,也为测试其他方法开辟了新的可能性。我们认为,所提出的方法具有多种应用,从无线阵列传感器到超声成像中使用的麦克风和换能器,其工作环境的特征在于极高的噪声。

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