基于 RG-DMSA 神经网络的探地雷达信号施工环境噪声抑制技术

Qing Wang, Yisheng Chen, Yupeng Shen, Meng Li
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摘要

探地雷达(GPR)通常用于探测建筑环境中的目标。由于施工环境不同,噪声在 GPR 信号上表现出不同的特性。当噪声在 GPR 信号上广泛分布,且其频谱与有源信号的频谱存在混叠时,传统的滤波方法很难分离和抑制噪声。本文提出了一种基于递归引导和双多尺度自注意机制神经网络(RG-DMSA-NN)的深度学习 GPR 图像噪声抑制方法,利用递归引导模块和双多尺度自注意机制模块提高图像的特征提取能力,增强图像噪声抑制的鲁棒性和泛化能力。通过对合成测试数据和澳门科技馆实际采集的 GPR 数据的噪声抑制应用,证明了该方法相对于传统滤波、DnCNN 和 UNet 噪声抑制方法的优势。
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Construction Environment Noise Suppression of Ground-Penetrating Radar Signals Based on an RG-DMSA Neural Network
Ground-penetrating radar (GPR) is often used to detect targets in a construction environment. Due to the different construction environments, the noise exhibits different characteristics on the GPR signal. When the noise is widely distributed on the GPR signal, and its spectrum and the spectrum of the active signal are aliased, it is difficult to separate and suppress the noise by traditional filtering methods. In this paper, we propose a deep learning GPR image noise suppression method based on a recursive guided and dual multi-scale self-attention mechanism neural network (RG-DMSA-NN), which uses a recursive guidance module and a dual multi-scale self-attention mechanism module to improve the feature extraction ability of the image and enhance the robustness and generalization ability in image noise suppression. Through the application of noise suppression on the synthesized test data and the GPR data actually collected by the Macao Science and Technology Museum, the advantages of this method over the traditional filtering, DnCNN and UNet noise suppression methods are demonstrated.
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