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Deep Learning for DOA Estimation in MIMO Radar Systems via Emulation of Large Antenna Arrays

机译:通过大天线阵列仿真深度学习MIMO雷达系统的DOA估计

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摘要

We present a MUSIC-based Direction of Arrival (DOA) estimation strategy using small antenna arrays, via employing deep learning for reconstructing the signals of a virtual large antenna array. Not only does the proposed strategy deliver significantly better performance than simply plugging the incoming signals into MUSIC, but surprisingly, the performance is also better than directly using an actual large antenna array with MUSIC for high angle ranges and low test SNR values. We further analyze the best choice for the training SNR as a function of the test SNR, and observe dramatic changes in the behavior of this function for different angle ranges.
机译:我们通过采用深度学习来重建虚拟大天线阵列的信号,介绍基于音乐的到达(DOA)估计策略方向(DOA)估计策略。 不仅提出的策略提供了明显的性能,而不是简单地将传入的信号堵塞到音乐中,但令人惊讶的是,性能也比直接使用具有高角度范围和低测试SNR值的音乐的实际大天线阵列更好。 我们进一步分析了训练SNR的最佳选择,作为测试SNR的函数,并观察不同角度范围的该函数的行为的戏剧性变化。

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