Phase enhancement model based on supervised convolutional neural network for coherent DOA estimation

作者:Houhong Xiang, Baixiao Chen, Ting Yang, Dong Liu

摘要

When the elevation of targets is smaller than beamwidth, the coherent multi-path signals will significantly degrade the direction of arrival (DOA) estimation accuracy of existing methods for a very-high-frequency (VHF) radar system. Through detailed theoretical analysis, we demonstrate that the phase distortion is the key factor of degrading the accuracy of DOA estimation. Hence, a novel phase enhancement model based on supervised convolutional neural network (CNN) for coherent DOA estimation is proposed to mitigate the phase distortion and improve estimation accuracy. The results of simulation experiments and real data have demonstrated the superiority of proposed method in DOA estimation accuracy and resolution compared to classic physics-driven methods. Moreover, the proposed scheme is suitable for the coherent DOA estimation compared with existing data-driven methods.

论文关键词:Phase enhancement model, Supervised convolutional neural network, Coherent DOA estimation, Multi-path effect, VHF radar

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论文官网地址:https://doi.org/10.1007/s10489-020-01678-4