Learning to label seismic structures with deconvolution networks and weak labels

Yazeed Alaudah, Shan Gao, G. AlRegib
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引用次数: 25

Abstract

Recently, there has been increasing interest in using deep learning techniques for various seismic interpretation tasks. However, unlike shallow machine learning models, deep learning models are often far more complex and can have hundreds of millions of free parameters. This not only means that large amounts of computational resources are needed to train these models, but more critically, they require vast amounts of labeled training data as well. In this work, we show how automatically-generated weak labels can be effectively used to overcome this problem and train powerful deep learning models for labeling seismic structures in large seismic volumes. To achieve this, we automatically generate thousands of weak labels and use them to train a deconvolutional network for labeling fault, salt dome, and chaotic regions within the Netherlands F3 block. Furthermore, we show how modifying the loss function to take into account the weak training labels helps reduce false positives in the labeling results. The benefit of this work is that it enables the effective training and deployment of deep learning models to various seismic interpretation tasks without requiring any manual labeling effort. We show excellent results on the Netherlands F3 block, and show how our model outperforms other baseline models.
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学习用反卷积网络和弱标记标记地震结构
最近,人们对将深度学习技术用于各种地震解释任务越来越感兴趣。然而,与浅层机器学习模型不同,深度学习模型通常要复杂得多,可以有数亿个自由参数。这不仅意味着需要大量的计算资源来训练这些模型,而且更关键的是,它们还需要大量的标记训练数据。在这项工作中,我们展示了如何有效地使用自动生成的弱标签来克服这个问题,并训练强大的深度学习模型来标记大地震体中的地震结构。为了实现这一目标,我们自动生成数千个弱标签,并使用它们来训练一个反卷积网络,用于标记荷兰F3块内的故障、盐丘和混沌区域。此外,我们展示了如何修改损失函数以考虑弱训练标签有助于减少标记结果中的误报。这项工作的好处是,它可以有效地训练和部署深度学习模型,用于各种地震解释任务,而无需任何手动标记工作。我们在荷兰F3区块上展示了出色的结果,并展示了我们的模型如何优于其他基线模型。
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