应用地球物理:英文版 · 2020年第3期419-431,共13页

Low-frequency swell noise suppression based on U-Net

作者:Zhang Rui-qi,Song Peng,Liu Bao-hua,Zhang Xiao-bo,Tan Jun,Zou Zhi-hui,Xie Chuang,Wang Shao-wen

摘要:Low-frequency band-shaped swell noise with strong amplitude is common in marine seismic data.The conventional high-pass fi ltering algorithm widely used to suppress swell noise often results in serious damage of effective information.This paper introduces the residual learning strategy of denoising convolutional neural network(DnCNN)into a U-shaped convolutional neural network(U-Net)to develop a new U-Net with more generalization,which can eliminate low-frequency swell noise with high precision.The results of both model date tests and real data processing show that the new U-Net is capable of effi cient learning and high-precision noise removal,and can avoid the overfi tting problem which is very common in conventional neural network methods.This new U-Net can also be generalized to some extent and can eff ectively preserve low-frequency eff ective information.Compared with the conventional high-pass fi ltering method commonly used in the industry,the new U-Net can eliminate low-frequency swell noise with higher precision while eff ectively preserving low-frequency eff ective information,which is of great signifi cance for subsequent processing such as amplitude-preserving imaging and full waveform inversion.

发文机构:College of Marine Geosciences Laboratory for MMR Key Laboratory of Submarine Geoscience and Prospecting Techniques National Deep Sea Center

关键词:U-NetswellnoisenoiseattenuationresiduallearningGENERALIZATION

分类号: P73[天文地球—海洋科学]

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