基于噪声估计和局部相似性的自适应分级去噪地震数据

Xueting Yang, Yong Li, Zhangquan Liao, Yingtian Liu, Junheng Peng
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引用次数: 0

摘要

地震数据去噪是地震数据处理的重要组成部分,直接关系到地震数据的后续处理。针对这一问题,许多学者提出了许多基于秩缩减、稀疏变换、域变换和深度学习的方法。然而,当这些地震数据具有噪声、复杂性和不均匀性时,这些方法往往会导致噪声过大或噪声过小。为了解决这一问题,我们提出了一种新方法,即噪声水平估计和相似性分割分级去噪。具体来说,我们首先评估整个地震数据的平均噪声水平,并使用块匹配和三维滤波(BM3D)方法对其进行去噪。然后,利用局部相似性将去噪数据与剩余数据进行对比,找出噪声水平明显偏离平均值的区域。其余数据则完整保留。然后对这些区域进行重新评估和去噪处理。最后,我们将第一次去噪后获得的数据与重新去噪后的数据进行整合,以获得更完整、更干净的数据。这种方法在理论模型和实际地震数据上得到了验证。实验结果表明,该方法对噪声不均匀的地震数据具有良好的效果。
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Adaptive Graded Denoising of Seismic Data Based on Noise Estimation and Local Similarity
Seismic data denoising is an important part of seismic data processing, which directly relate to the follow-up processing of seismic data. In terms of this issue, many authors proposed many methods based on rank reduction, sparse transformation, domain transformation, and deep learning. However, when the seismic data is noisy, complex and uneven, these methods often lead to over-denoising or under-denoising. To solve this problems, we proposed a novel method called noise level estimation and similarity segmentation for graded denoising. Specifically, we first assessed the average noise level of the entire seismic data and denoised it using block matching and three-dimensional filtering (BM3D) methods. Then, the denoised data is contrasted with the residual using local similarity, pinpointing regions where noise levels deviate significantly from the average. The remaining data is retained intact. These areas are then re-evaluated and denoised. Finally, we integrated the data retained after the first denoising with the re-denoising data to get a complete and cleaner data. This method is verified on theoretical model and actual seismic data. The experimental results show that this method has a good effect on seismic data with uneven noise.
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