Standard

The comparison of convolution neural network? for localized capturing detection of faults on seismic images. / Lapteva, A.; Loginov, G.; Duchkov, A. et al.

81st EAGE Conference and Exhibition 2019. EAGE Publishing BV, 2019. (81st EAGE Conference and Exhibition 2019).

Research output: Chapter in Book/Report/Conference proceedingConference contributionResearchpeer-review

Harvard

Lapteva, A, Loginov, G, Duchkov, A & Alyamkin, S 2019, The comparison of convolution neural network? for localized capturing detection of faults on seismic images. in 81st EAGE Conference and Exhibition 2019. 81st EAGE Conference and Exhibition 2019, EAGE Publishing BV, 81st EAGE Conference and Exhibition 2019, London, United Kingdom, 03.06.2019.

APA

Lapteva, A., Loginov, G., Duchkov, A., & Alyamkin, S. (2019). The comparison of convolution neural network? for localized capturing detection of faults on seismic images. In 81st EAGE Conference and Exhibition 2019 (81st EAGE Conference and Exhibition 2019). EAGE Publishing BV.

Vancouver

Lapteva A, Loginov G, Duchkov A, Alyamkin S. The comparison of convolution neural network? for localized capturing detection of faults on seismic images. In 81st EAGE Conference and Exhibition 2019. EAGE Publishing BV. 2019. (81st EAGE Conference and Exhibition 2019).

Author

Lapteva, A. ; Loginov, G. ; Duchkov, A. et al. / The comparison of convolution neural network? for localized capturing detection of faults on seismic images. 81st EAGE Conference and Exhibition 2019. EAGE Publishing BV, 2019. (81st EAGE Conference and Exhibition 2019).

BibTeX

@inproceedings{e278dd638b6141e484ef921e282cfe16,
title = "The comparison of convolution neural network? for localized capturing detection of faults on seismic images",
abstract = "Due to the large volumes of seismic in the industry, there is a constant effort to develop automatic or semi-automatic tools for picking horizons, faults etc. The variety of convolution neural networks proposed for automatic interpretation of seismic images, especially for faults detection. In this paper, we test different CNN models for faults detection and derive the key neural network parameters that influence on the faults localization. We aim to derive the CNN parameters, that allows to detect thin area of the fault and balanced detection of the unmarked faults. We provide the experiments on the open F3 Northen Block dataset, which is popular for benchmarking of the machine learning solutions in seismic interpretation. The best of the tested models allows to highlight the unmarked faults. The accuracy of this model for test and validation dataset is 0.97/0.96, precision, recall and f1 score for faults and background classes are 0.55/0.87, 1.00/0.98, 0.68/0.99, the Jaccard similarity score is 0.94.",
author = "A. Lapteva and G. Loginov and A. Duchkov and S. Alyamkin",
year = "2019",
month = jun,
day = "3",
language = "English",
series = "81st EAGE Conference and Exhibition 2019",
publisher = "EAGE Publishing BV",
booktitle = "81st EAGE Conference and Exhibition 2019",
address = "Netherlands",
note = "81st EAGE Conference and Exhibition 2019 ; Conference date: 03-06-2019 Through 06-06-2019",

}

RIS

TY - GEN

T1 - The comparison of convolution neural network? for localized capturing detection of faults on seismic images

AU - Lapteva, A.

AU - Loginov, G.

AU - Duchkov, A.

AU - Alyamkin, S.

PY - 2019/6/3

Y1 - 2019/6/3

N2 - Due to the large volumes of seismic in the industry, there is a constant effort to develop automatic or semi-automatic tools for picking horizons, faults etc. The variety of convolution neural networks proposed for automatic interpretation of seismic images, especially for faults detection. In this paper, we test different CNN models for faults detection and derive the key neural network parameters that influence on the faults localization. We aim to derive the CNN parameters, that allows to detect thin area of the fault and balanced detection of the unmarked faults. We provide the experiments on the open F3 Northen Block dataset, which is popular for benchmarking of the machine learning solutions in seismic interpretation. The best of the tested models allows to highlight the unmarked faults. The accuracy of this model for test and validation dataset is 0.97/0.96, precision, recall and f1 score for faults and background classes are 0.55/0.87, 1.00/0.98, 0.68/0.99, the Jaccard similarity score is 0.94.

AB - Due to the large volumes of seismic in the industry, there is a constant effort to develop automatic or semi-automatic tools for picking horizons, faults etc. The variety of convolution neural networks proposed for automatic interpretation of seismic images, especially for faults detection. In this paper, we test different CNN models for faults detection and derive the key neural network parameters that influence on the faults localization. We aim to derive the CNN parameters, that allows to detect thin area of the fault and balanced detection of the unmarked faults. We provide the experiments on the open F3 Northen Block dataset, which is popular for benchmarking of the machine learning solutions in seismic interpretation. The best of the tested models allows to highlight the unmarked faults. The accuracy of this model for test and validation dataset is 0.97/0.96, precision, recall and f1 score for faults and background classes are 0.55/0.87, 1.00/0.98, 0.68/0.99, the Jaccard similarity score is 0.94.

UR - http://www.scopus.com/inward/record.url?scp=85084022215&partnerID=8YFLogxK

M3 - Conference contribution

AN - SCOPUS:85084022215

T3 - 81st EAGE Conference and Exhibition 2019

BT - 81st EAGE Conference and Exhibition 2019

PB - EAGE Publishing BV

T2 - 81st EAGE Conference and Exhibition 2019

Y2 - 3 June 2019 through 6 June 2019

ER -

ID: 24227840