Explainable Artificial Intelligence driven mask design for
self-supervised seismic denoising
- URL: http://arxiv.org/abs/2307.06682v1
- Date: Thu, 13 Jul 2023 11:02:55 GMT
- Title: Explainable Artificial Intelligence driven mask design for
self-supervised seismic denoising
- Authors: Claire Birnie and Matteo Ravasi
- Abstract summary: Self-supervised coherent noise suppression methods require extensive knowledge of the noise statistics.
We propose the use of explainable artificial intelligence approaches to see inside the black box that is the denoising network.
We show that a simple averaging of the Jacobian contributions over a number of randomly selected input pixels, provides an indication of the most effective mask.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The presence of coherent noise in seismic data leads to errors and
uncertainties, and as such it is paramount to suppress noise as early and
efficiently as possible. Self-supervised denoising circumvents the common
requirement of deep learning procedures of having noisy-clean training pairs.
However, self-supervised coherent noise suppression methods require extensive
knowledge of the noise statistics. We propose the use of explainable artificial
intelligence approaches to see inside the black box that is the denoising
network and use the gained knowledge to replace the need for any prior
knowledge of the noise itself. This is achieved in practice by leveraging
bias-free networks and the direct linear link between input and output provided
by the associated Jacobian matrix; we show that a simple averaging of the
Jacobian contributions over a number of randomly selected input pixels,
provides an indication of the most effective mask to suppress noise present in
the data. The proposed method therefore becomes a fully automated denoising
procedure requiring no clean training labels or prior knowledge. Realistic
synthetic examples with noise signals of varying complexities, ranging from
simple time-correlated noise to complex pseudo rig noise propagating at the
velocity of the ocean, are used to validate the proposed approach. Its
automated nature is highlighted further by an application to two field
datasets. Without any substantial pre-processing or any knowledge of the
acquisition environment, the automatically identified blind-masks are shown to
perform well in suppressing both trace-wise noise in common shot gathers from
the Volve marine dataset and colored noise in post stack seismic images from a
land seismic survey.
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