基于深度残差学习的未知空间有色噪声场近场源定位

Zhuoqian Jiang, J. Xin, Weiliang Zuo, Nanning Zheng, A. Sano
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引用次数: 1

摘要

本文利用基于深度残差学习的端到端神经网络,研究了未知空间彩色噪声环境下的近场源定位问题。具体而言,该方法以阵列协方差的多维信息为输入,最后通过回归结构直接输出近场源的位置信息。深度神经网络的结构设计很好地考虑了表达能力和计算复杂度之间的权衡。此外,得益于结合分离度遍历空间位置生成训练数据的方法,该方法对不同的位置参数分离具有鲁棒性。仿真结果表明,该方法在各种条件下都优于现有的模型驱动方法,特别是在低信噪比、快照数量少或相关源的不利场景下。
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Deep Residual Learning Based Localization of Near-Field Sources in Unknown Spatially Colored Noise Fields
In this paper, we explore the problem of near-field source localization in an unknown spatially colored noise environment using an end-to-end neural network which is based on deep residual learning. Specifically, the proposed approach uses the multi-dimensional information of the array covariance as input, and finally directly outputs the location information of the near-field sources through the regression structure. The architecture of deep neural network is well designed taking into account the trade-off between the expression ability and compu-tational complexity. In addition, benefiting from the method of generating training data that combines the degree of separation to traverse the spatial location, the proposed approach has a robust performance for different location parameter separation. The simulation results demonstrate that the proposed approach outperforms the existing model-driven methods under various conditions, especially for the adverse scenes with low SNRs, small number of snapshots, or correlated sources.
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