Performance Analysis of DOA Estimation of Two Targets Using Deep Learning

Yuya Kase, T. Nishimura, T. Ohgane, Y. Ogawa, Daisuke Kitayama, Y. Kishiyama
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引用次数: 5

Abstract

Direction of arrival (DOA) estimation of wireless signals is demanded in many situations. In addition to classical methods such as MUSIC and ESPRIT, non-linear algorithms such as compressed sensing has been very common recently. Deep learning or machine learning is also known as a non-linear algorithm and now applied to various fields. Generally, DOA estimation using deep learning is classified as on-grid estimation. Thus, the accuracy may be degraded when the DOA is on the boundary. In this paper, the performance of DOA estimation using deep learning is compared with one of MUSIC which is off grid estimation. The simulation results show that deep learning based estimation performs less well than MUSIC due to the grid boundary problem. When the allowable estimation error is relaxed, however, it is found that the success rate of DOA estimation surpass one of MUSIC.
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基于深度学习的两目标DOA估计性能分析
在许多情况下都需要对无线信号进行到达方向估计。除了MUSIC和ESPRIT等经典方法外,近年来压缩感知等非线性算法也非常普遍。深度学习或机器学习也被称为非线性算法,现在应用于各个领域。一般来说,使用深度学习的DOA估计被归类为网格上估计。因此,当DOA在边界上时,精度可能会降低。本文比较了基于深度学习的DOA估计与基于MUSIC的离网DOA估计的性能。仿真结果表明,由于网格边界问题,基于深度学习的估计效果不如MUSIC。然而,当允许估计误差放宽时,发现DOA估计的成功率超过MUSIC。
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