Global Geology 2020, 23(4) 241-246 DOI:   10.3969/j.issn.1673-9736.2020.04.05  ISSN: 1673-9736 CN: 22-1371/P

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Keywords
DDTF dictionary
hard threshold
curvelet transform
random noise
Authors
ZHENG Jialiang
WANG Deli
ZHANG Liang
PubMed
Article by Zheng J
Article by Wang D
Article by Zhang L

Seismic data denoising based on data-driven tight frame dictionary learning method

ZHENG Jialiang, WANG Deli, ZHANG Liang

College of Geo-Exploration Science and Technology, Jilin University, Changchun 130026, China

Abstract

Because of various complicated factors in seismic data collection, the random noise of seismic data is too difficult to avoid. This random noise reduces the quality of seismic data and increases the difficulty of seismic data processing and interpretation. Improving the denoising technology is significant. In order to improve seismic data denoising result, a novel method named data-driven tight frame (DDTF) is introduced in this paper. First, we get the sparse coefficients of seismic data with noise by DDTF. Then we remove the smaller sparse coefficient by using the hard threshold function. Finally, we get the denoised seismic data by inverse transform. Furthermore, the DDTF is compared with curvelet transform in the stimulation and practical seismic data experiments to validate its performance. DDTF can raise the signal-to-noise ratio of seismic data denoising and protect the effective signal well.

Keywords DDTF dictionary   hard threshold   curvelet transform   random noise  
Received 2020-02-19 Revised 2020-03-29 Online:  
DOI: 10.3969/j.issn.1673-9736.2020.04.05
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Corresponding Authors: WANG Deli
Email: 1070021872@qq.com
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