A Multiple Measurement Vector-Based Deep Unfolded Network for One-bit DOA Estimation

Mengchao Zhan, Feng Xi, Shengyao Chen
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Abstract

This paper introduces a new direction-of-arrival (DOA) estimation method for multi-snapshot narrowband signals. To reduce the system cost, we adopt one-bit compressed sensing in the process of sampling and quantization for analog signals. We propose a deep unfolded network (DUN) based on multiple measurement vectors (MMVs), known as the learned MMV-based binary iteration soft threshold (L-MMV-BIST) network, to estimate the DOAs from the one-bit measurements. This new DUN is designed by unfolding each update of the binary iterative soft threshold algorithm (ISTA) into a layer of a deep neural network, thus it has the ability to learn soft threshold and other iteration parameters adaptively. Our simulation results show that the L-MMV -BIST network can estimate DOA information from the one-bit measurements. In addition, this network outperforms traditional BIST algorithm in both computational complexity and recovery accuracy.
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基于多测量向量的深度展开网络位DOA估计
介绍了一种新的多快照窄带信号到达方向估计方法。为了降低系统成本,我们在模拟信号的采样和量化过程中采用了1位压缩感知。我们提出了一种基于多测量向量(mmv)的深度展开网络(DUN),即基于学习的基于mmv的二进制迭代软阈值(L-MMV-BIST)网络,从一比特测量中估计doa。该算法通过将二元迭代软阈值算法(ISTA)的每次更新展开为深度神经网络的一层,从而具有自适应学习软阈值和其他迭代参数的能力。仿真结果表明,L-MMV -BIST网络可以从一比特的测量数据中估计出DOA信息。此外,该网络在计算复杂度和恢复精度上都优于传统的BIST算法。
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