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Abstract

Summary

Trace-wise coherent noise exists in seismic data due to various reasons. We propose a self-supervised deep learning method to attenuate any type of trace-wise noise without having a clean label or noise characteristics. The proposed method is an enhanced version of blind-trace denoising. We modify the masking and calculation of loss so that the designed network reconstructs the noisy traces from the clean ones and ignores the noisy traces when reproducing the clean traces. We explain a step-by-step implementation of our method and show its application on a real deep-water dataset. The proposed method decreases the signal leakage and improves the reconstruction accuracy at and close to noisy traces.

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/content/papers/10.3997/2214-4609.202310269
2023-06-05
2026-02-07
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References

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