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ES-DPR: A DOA-Based Method for Passive Localization in Indoor Environments

机译:ES-DPR:基于DOA的室内环境被动定位方法

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摘要

In this paper, we propose a novel indoor passive localization approach called eigenspace-based DOA with direct-path recognition (ES-DPR), based on a DOA estimation algorithm with multiple omnidirectional antennas deployed in a uniform linear array (ULA). To address the multipath propagation interference problem in the indoor environments, we utilize the azimuth and RSS estimation results, which are calculated by using the eigenspace-based DOA (ES-DOA) algorithm, in a novel style. A direct-path bearing recognition algorithm is introduced to identify the real DOA of the signal source in different indoor environments, by combining the azimuth and RSS estimation with ensemble learning methods. Numerical simulations are conducted to verify the validity and superiority of the proposed method. The results show that the proposed ES-DPR method can achieve high resolution and has strong anti-noise capability in dealing with the multipath signals, and the direct-path recognition algorithm is reliable and robust in different indoor environments, even in undetectable direct-path conditions.
机译:在本文中,我们基于在均匀线性阵列(ULA)中部署了多个全向天线的DOA估计算法,提出了一种新颖的室内无源定位方法,称为基于特征空间的具有直接路径识别的DOA(ES-DPR)。为了解决室内环境中的多径传播干扰问题,我们采用了新颖的方式,利用基于特征空间的DOA(ES-DOA)算法计算出的方位角和RSS估计结果。引入直接路径方位识别算法,通过将方位角和RSS估计与集成学习方法相结合,来识别不同室内环境中信号源的真实DOA。通过数值模拟验证了所提方法的有效性和优越性。结果表明,所提出的ES-DPR方法在处理多径信号方面具有较高的分辨率和较强的抗噪能力,即使在无法检测到的直接路径下,直接路径识别算法在不同的室内环境下也具有可靠和鲁棒性。条件。

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