Research on Seismic Data Denoising Based on Dual Channel Residual Attention Network

Yuxiang Liu, Yinghua Zhou, Xiaodan Liu
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Abstract

In recent years, seismic data denoising has attracted more and more scholars' attention and research, and the suppression of random noise is the key to improving the signal-to-noise ratio of seismic data. Aiming at the problem that traditional denoising methods are difficult to effectively remove a large amount of random noise and retain effective signals, we propose a neural network model based on dual channel residual attention network (DCRANet). Specifically, the model consists of a residual attention block (RAB), a dilated convolution sparse block (DCSB) and a feature enhancement block (FEB). The residual blocks in RAB can avoid some problems such as gradient vanishing and gradient exploding when the network is too deep, and the use of attention mechanism can guide the network to effectively extract complex noise information. The DCSB recovers the useful details from complex noise information by expanding the receptive field, fully acquiring important structural information and edge features of seismic data. The FEB integrates the noise features extracted by RAB and DCSB, it uses convolutional layers to extract the noise information of seismic data, and finally reconstructs clean seismic data image by the residual learning strategy. Compared with NL-Bayes, BM3D, DnCNN, CBDNet and DudeNet, DCRANet effectively suppresses random noise while retaining more local details and obtains a higher average peak signal-to-noise ratio (PSNR) and average structural similarity (SSIM).
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基于双通道残差注意网络的地震数据去噪研究
近年来,地震资料去噪引起了越来越多学者的关注和研究,而抑制随机噪声是提高地震资料信噪比的关键。针对传统去噪方法难以有效去除大量随机噪声并保留有效信号的问题,提出了一种基于双通道残差注意网络(DCRANet)的神经网络模型。具体来说,该模型由残余注意块(RAB)、扩展卷积稀疏块(DCSB)和特征增强块(FEB)组成。RAB中的残差块可以避免网络深度过深时出现的梯度消失、梯度爆炸等问题,并且利用注意机制可以引导网络有效提取复杂噪声信息。DCSB通过扩大接收野,充分获取地震数据的重要结构信息和边缘特征,从复杂的噪声信息中恢复有用的细节。该方法结合RAB和DCSB提取的噪声特征,利用卷积层提取地震数据的噪声信息,最后利用残差学习策略重建干净的地震数据图像。与NL-Bayes、BM3D、DnCNN、CBDNet和DudeNet相比,DCRANet在有效抑制随机噪声的同时保留了更多的局部细节,获得了更高的平均峰值信噪比(PSNR)和平均结构相似度(SSIM)。
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