Unsupervised Learning Strategy For Direction-Of-Arrival Estimation Network

IEEE SIGNAL PROCESSING LETTERS(2021)

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Abstract
In this letter, we proposed a novel unsupervised learning strategy for direction-of-arrival (DOA) estimation network. Inspired by the sparse power spectrum and l(1)-norm optimization, we develop a novel loss function to cooperate with the estimation network. Unlike the prior DL-based methods, the proposed method does not need any manual annotations for training and validation datasets. Compared with state-of-art methods, the proposed method can automatically increase the degree of freedom of the array without further pre-processing on the covariance matrix of array observation data. Moreover, the proposed method can obtain clear spectrum and precise DOAs under harsh estimation environments.
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Key words
Artificial intelligent, deep neural network, direction-of-arrival estimation, unsupervised learning
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