2022
DOI: 10.1109/jstars.2022.3162763
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Expand Dimensional of Seismic Data and Random Noise Attenuation Using Low-Rank Estimation

Abstract: Random noise attenuation in seismic data requires employing leading-edge methods to attain reliable denoised data. Efficient noise removal, effective signal preservation and recovery, reasonable processing time with a minimum signal distortion and seismic event deterioration are properties of a desired noise suppression algorithm. There are various noise attenuation methods available that more or less have these properties. We aim to obtain more effective denoised seismic data by assuming 3-D seismic data as a… Show more

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Cited by 22 publications
(6 citation statements)
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“…Recently, great attention has been caught to applying deep learning for the waste classification related to computer version (CV) with the development of computer hardware (Nasri et al, 2020). Compared with traditional CV algorithms like scale-invariant feature transform (SIFT), supporting vector machine (SVM), and principal component (PCA) (Soleimani, 2016a,b;Lu and Chen, 2022), deep learning has the ability to automatically extract the representation and equips with more applicability, robustness, generalization, and scability (Lin et al, 2022;Mafakheri et al, 2022;Saad and Chen, 2022).…”
Section: Introductionmentioning
confidence: 99%
“…Recently, great attention has been caught to applying deep learning for the waste classification related to computer version (CV) with the development of computer hardware (Nasri et al, 2020). Compared with traditional CV algorithms like scale-invariant feature transform (SIFT), supporting vector machine (SVM), and principal component (PCA) (Soleimani, 2016a,b;Lu and Chen, 2022), deep learning has the ability to automatically extract the representation and equips with more applicability, robustness, generalization, and scability (Lin et al, 2022;Mafakheri et al, 2022;Saad and Chen, 2022).…”
Section: Introductionmentioning
confidence: 99%
“…The performance of these methods could be investigated more by comparing the average amplitude spectrum (Mafakheri et al, 2022). The average amplitude spectrum presents the original data and those obtained by FISTA and SFISTA methods, as shown in Figure 8 by the black, pink, and blue lines, respectively.…”
Section: Seismic Data Interpolation In the Curvelet Domainmentioning
confidence: 99%
“…Frontiers in Earth Science frontiersin.org cased borehole using a wireline system (e.g., Eaton et al, 2022;Wang et al, 2022), which usually is less sensitive and yields noisier data compared with cemented fiber due to inferior coupling between the cable and the surrounding medium. To handle noisy data processing, our workflow could benefit from further new samples with diverse noise types and advanced noise attenuation tools (e.g., Mahdavi et al, 2021;Mafakheri et al, 2022) as part of the data pre-conditioning step. An advantage of CNN machine-learning techniques is that the network can be retrained as more data become available, which makes it possible to use transfer learning, i.e., to train a network using DAS data from one well and apply it to DAS data from other wells.…”
Section: Discussionmentioning
confidence: 99%