虚拟现实超知识库中地震体三维锚的构造与检测

W. Santos, Isabela Chambers, E. V. Brazil, M. Moreno
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引用次数: 4

摘要

地震数据是地球科学家用来调查地下区域以寻找可勘探资源的信息来源。这些数据体积庞大且有噪声,因此难以可视化,这促使人们研究新的计算系统来辅助专家,如可视化方法、信号处理和机器学习模型。我们提出了一个系统,帮助地质学家、地球物理学家和相关专家在虚拟现实(VR)中解释地震数据。该系统使用了一个超知识库(HKBase),它将兴趣区域(roi)结构为用户和系统之间的语义锚点,反之亦然。例如,通过HKBase,用户可以加载和检查人工智能系统的输出,或者以同样的方式提供新的输入和反馈。我们与专家一起进行了测试,以评估系统在他们的任务中的作用,以收集有关软件如何改变他们日常工作的反馈和新见解。根据我们的研究结果,我们声称通过在地震解释任务中创造宝贵的经验,我们为油气行业的VR迈出了一步。
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Structuring and Inspecting 3D Anchors for Seismic Volume into Hyperknowledge Base in Virtual Reality
Seismic data is a source of information geoscientists use to investigate underground regions to look for resources to explore. Such data are volumetric and noisy, and thus challenging to visualize, which motivated the research of new computational systems to assist the expert, such as visualization methods, signal processing, and machine learning models. We propose a system that aids geologists, geophysicists, and related experts in the domain in interpreting seismic data in virtual reality (VR). The system uses a hyperknowledge base (HKBase), which structures regions of interest (ROIs) as anchors with semantics from the user to the system and vice-versa. For instance, through the HKBase, the user can load and inspect the output from AI systems or give new inputs and feedback in the same way. We ran tests with experts to evaluate the system in their tasks to collect feedback and new insights on how the software could transform their routines. In accordance with our results, we claim we took one step forward for VR in the oil & gas industry by creating a valuable experience in the task of seismic interpretation.
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