基于轻量化级联神经网络的信号DOA估计
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东华理工大学电子与电气工程学院(智能制造学院)南昌 330013

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TP391;TN911

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江西省“双千计划”长期项目(DHSQT220210003)资助


Signal DOA estimation based on lightweight cascading neural networks
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College of Electronics and Electrical Engineering (College of Intelligent Manufacturing),East China University of Technology, Nanchang 330013,China

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    摘要:

    针对现有基于深度学习的DOA估计算法存在参数量大、依赖易受噪声干扰的协方差矩阵输入,难以部署于资源受限的边缘设备的问题。本文提出一种轻量化卷积分类回归神经网络DOA估计算法,采用原始信号作为模型输入,通过端到端学习直接从时域信号中提取DOA特征,避免了传统协方差矩阵方法在低信噪比环境下的性能退化问题。模型通过时空特征压缩和结合Ghost瓶颈结构减少参数量,并引入注意力机制自适应地重新标定特征通道权重,增强对关键特征的关注度。采用粗分类与细回归相结合的双分支输出策略,先确定角度区间再预测扇区内偏移量,从而在严苛条件下(如-5 dB信噪比)仍能保持高精度估计。实验结果表明,该模型在保持优异性能(准确率96.3%)的同时,实现了高度轻量化(模型实际部署大小118.83 kB,参数量24 783)。与传统算法和主流轻量模型相比,本模型在降低模型参数量的基础上,同时保证了准确率和计算效率,为边缘设备提供了高精度、低延迟、低资源消耗的DOA估计解决方案。

    Abstract:

    Addressing the issues of existing deep learning-based direction of arrival (DOA) estimation algorithms, which suffer from large parameter volumes and dependence on covariance matrix inputs that are easily affected by noise, making deployment on resource-constrained edge devices challenging, this paper proposes a lightweight convolutional classification-regression neural network DOA estimation algorithm. The proposed method uses raw signals as model inputs and directly extracts DOA features from time-domain signals through end-to-end learning, thereby avoiding the performance degradation associated with traditional covariance matrix methods under low signal-to-noise ratio conditions. The model reduces the number of parameters through spatiotemporal feature compression and the integration of a Ghost bottleneck structure, and introduces an attention mechanism to adaptively recalibrate feature channel weights, enhancing focus on critical features. A dual-branch output strategy combining coarse classification and fine regression is adopted, first determining the angular interval and then predicting the sectoral offset, allowing for high-precision estimation even under stringent conditions (e.g., -5 dB SNR). Experimental results demonstrate that the model maintains outstanding performance (accuracy of 96.3%) while achieving high compactness (actual deployment size of 118.83 kB, with 24 783 parameters). Compared with traditional algorithms and mainstream lightweight models, this model preserves both accuracy and computational efficiency while reducing model parameter volume, providing edge devices with a high-precision, low-latency, and low-resource-consumption DOA estimation solution.

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熊伟华,章勇,张雪梅,李良尧.基于轻量化级联神经网络的信号DOA估计[J].电子测量技术,2026,49(5):156-167

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  • 在线发布日期: 2026-05-08
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