Translation-invariant wavelet denoising of full-tensor gravity –gradiometer data

被引:0
|
作者
Dai-Lei Zhang
Da-Nian Huang
Ping Yu
Yuan Yuan
机构
[1] Jilin University,College of Geo
[2] the State Oceanic Administration,Exploration Science and Technology
[3] the State Oceanic Administration,The Second Institute of Oceanography
来源
Applied Geophysics | 2017年 / 14卷
关键词
tensor; gravity gradiometry; denoising; threshold; translation-invariant wavelet;
D O I
暂无
中图分类号
学科分类号
摘要
Denoising of full-tensor gravity-gradiometer data involves detailed information from field sources, especially the data mixed with high-frequency random noise. We present a denoising method based on the translation-invariant wavelet with mixed thresholding and adaptive threshold to remove the random noise and retain the data details. The novel mixed thresholding approach is devised to filter the random noise based on the energy distribution of the wavelet coefficients corresponding to the signal and random noise. The translationinvariant wavelet suppresses pseudo-Gibbs phenomena, and the mixed thresholding better separates the wavelet coefficients than traditional thresholding. Adaptive Bayesian threshold is used to process the wavelet coefficients according to the specific characteristics of the wavelet coefficients at each decomposition scale. A two-dimensional discrete wavelet transform is used to denoise gridded data for better computational efficiency. The results of denoising model and real data suggest that compared with Gaussian regional filter, the proposed method suppresses the white Gaussian noise and preserves the high-frequency information in gravity-gradiometer data. Satisfactory denoising is achieved with the translation-invariant wavelet.
引用
收藏
页码:606 / 619
页数:13
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