Litcius/Paper detail

Attenuation of seismic swell noise using convolutional neural networks in frequency domain and transfer learning

Jiachun You, Yajuan Xue, Junxing Cao, Canping Li

2020Interpretation13 citationsDOI

Abstract

Because swell noises are very common in marine seismic data, it is extremely important to attenuate them to improve the signal-to-noise ratio (S/N). Compared to process noises in the time domain, we have built a frequency-domain convolutional neural network (CNN) based on the short-time Fourier transform to address swell noises. In the numerical experiments, we quantitatively evaluate the denoising performances of the time- and frequency-domain CNNs, compare the impacts of network structures on attenuating swell noises, and study how network parameter choices impact the quality of the denoised signal based on peak S/N, structural similarity, and root-mean-square-error indices. These results help us to build an optimal CNN model. Furthermore, to illustrate the superiority of our proposed method, we compare the conventional and proposed CNN methods. To address the generalization capability of CNN, we adopt transfer learning by using fine tuning to adjust the weights of the pretrained model with a small amount of target data. The application of transfer learning improves the quality of the denoised images, which further proves that our proposed method with transfer learning has the potential to be deployed in actual seismic data acquisition.

Topics & Concepts

Convolutional neural networkComputer scienceSwellTransfer of learningNoise (video)Frequency domainTime domainArtificial intelligenceSIGNAL (programming language)Noise reductionPattern recognition (psychology)GeneralizationSpeech recognitionMathematicsComputer visionGeologyProgramming languageOceanographyImage (mathematics)Mathematical analysisSeismic Imaging and Inversion TechniquesSeismic Waves and AnalysisImage and Signal Denoising Methods