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Hybrid denoising approach

Provided that the noisy data $ \mathbf{d}$ is composed of the clean data $ \mathbf{s}$ and noise $ \mathbf{n}$ , $ f-x$ EMD can get a denoised section with all the horizontal events $ \hat{\mathbf{s}}_{h}$ , while leaving the dipping events in the noise section:

\begin{displaymath}\begin{split}\hat{\mathbf{s}}_{h} &\approx \mathbf{E}[\mathbf...
...hbf{n} &\approx \mathbf{d}- \mathbf{E}[\mathbf{d}]. \end{split}\end{displaymath} (4)

Here, $ \mathbf{E}$ denotes the noise attenuation operator by $ f-x$ EMD, $ \mathbf{s}_d$ denotes the true dipping events, and $ \mathbf{n}$ denotes random noise in the original seismic section.

We can retrieve the useful dipping events by applying another denoising operator onto the noise section,

$\displaystyle \hat{\mathbf{s}}_d \approx \mathbf{P}[ \mathbf{d}- \mathbf{E}[\mathbf{d}] ],$ (5)

where $ \mathbf{P}$ denotes a denoising operator which estimate the lost dipping events from the initial noise section, and $ \hat{\mathbf{s}}_d$ denotes the estimated dipping events. The final denoised section $ \hat{\mathbf{s}}$ is given by the summation of the horizontal and dipping signal section:

$\displaystyle \hat{\mathbf{s}} = \hat{\mathbf{s}}_h + \hat{\mathbf{s}}_d \approx \mathbf{E}[\mathbf{d}] + \mathbf{P}[ \mathbf{d}- \mathbf{E}[\mathbf{d}] ].$ (6)

The denoising operator $ \mathbf{P}$ in equation 5 can be chosen as $ f-x$ predictive filtering (Chen and Ma, 2014), wavelet transform (Chen et al., 2012), or curvelet transform (Dong et al., 2013). Thus, equation 5 becomes a general framework for all those $ f-x$ EMD based random noise attenuation approaches. To extend its generality, we propose to use $ f-x$ SSA (Oropeza and Sacchi, 2011) as $ \mathbf{P}$ in this paper.

The effectiveness of the novel approach can be ascribed to the strong horizontal-preservation ability of $ f-x$ EMD. When most of the useful horizontal energy is preserved after $ f-x$ EMD, we turn to deal with less number of plane-wave components in the noise section, which is much easier because less signal components usually correspond to a more strict control over the random noise, e.g., smaller prediction length in $ f-x$ predictive filtering (Canales, 1984) and lower rank for extracting useful components in $ f-x$ SSA (Oropeza and Sacchi, 2011). For example, lower rank corresponds to less-serious rank-mixing problem, that is , less amount of random noise can be leaked into the denoised section.


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Next: Selective hybrid denoising approach Up: Chen et al.: Selective Previous: Horizontal preservation and dipping

2015-11-23