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Structure label prediction using similarity-based retrieval and weakly supervised label mapping

机译:使用基于相似性的检索和弱监督标签映射的结构标记预测

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Recently, there has been significant interest in various supervised machine learning techniques that can help reduce the time and effort consumed by manual interpretation workflows. However, most successful supervised machine learning algorithms require huge amounts of annotated training data. Obtaining these labels for large seismic volumes is a very time-consuming and laborious task. We have addressed this problem by presenting a weakly supervised approach for predicting the labels of various seismic structures. By having an interpreter select a very small number of exemplar images for every class of subsurface structures, we use a novel similarity-based retrieval technique to extract thousands of images that contain similar subsurface structures from the seismic volume. By assuming that similar images belong to the same class, we obtain thousands of image-level labels for these images; we validate this assumption. We have evaluated a novel weakly supervised algorithm for mapping these rough image-level labels into more accurate pixel-level labels that localize the different subsurface structures within the image. This approach dramatically simplifies the process of obtaining labeled data for training supervised machine learning algorithms on seismic interpretation tasks. Using our method, we generate thousands of automatically labeled images from the Netherlands Offshore F3 block with reasonably accurate pixel-level labels. We believe that this work will allow for more advances in machine learning-enabled seismic interpretation.
机译:最近,对各种监督机器学习技术具有重要兴趣,可以帮助减少手动解释工作流消耗的时间和精力。但是,大多数成功的监督机器学习算法需要大量的注释训练数据。获得大型地震卷的这些标签是一个非常耗时和艰苦的任务。我们通过呈现弱监督方法来解决这一问题,以预测各种地震结构的标签。通过具有解释器为每种类地下结构选择非常少量的示例图像,我们使用基于新的类似性的检索技术来提取来自地震体积的数千个包含类似地下结构的数千个图像。假设类似的图像属于同一类,我们获得了数千个图像级标签的这些图像;我们验证了这个假设。我们已经评估了一种用于将这些粗糙图像级标签映射到更准确的像素级标签中的新型弱监督算法,该标签本地化图像内的不同地下结构。这种方法显着简化了获得用于地震解释任务的监督机器学习算法的标记数据的过程。使用我们的方法,我们通过合理准确的像素级标签从荷兰近海F3块生成数千个自动标记的图像。我们相信这项工作将允许在机器学习的地震解释中获得更多进步。

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