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Fast uncertainty-driven large-scale volume feature extraction on desktop PCs

机译:在台式PC上快速进行不确定性驱动的大规模体特征提取

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The ability to efficiently and accurately extract features of interest is an extremely important tool in the field of scientific visualization as it allows researchers to isolate regions based on their domain knowledge. However, the increasing size of large-scale datasets often forces users to rely on distributed computing environments which have many drawbacks in terms of interaction and convenience. Many of the current feature extraction techniques are designed around these distributed environments. The ability to overcome the memory and bandwidth limitations of desktop PCs can broaden their usability towards large-scale applications. In this work, we present a new hybrid feature extraction technique which combines GPU-accelerated clustering with the multi-resolution advantages of supervoxels in order to handle large-scale datasets on standard desktop PCs. Furthermore, this is paired with a user-driven uncertainty-based refinement approach to enhance extraction results into a desired level of detail. We demonstrate the effectiveness and interactivity of this technique using a number of application specific examples utilizing large-scale volumetric datasets.
机译:有效且准确地提取感兴趣特征的能力是科学可视化领域中极为重要的工具,因为它使研究人员可以根据领域知识来隔离区域。但是,大型数据集规模的增加通常迫使用户依赖于分布式计算环境,这在交互性和便利性方面存在许多缺点。许多当前的特征提取技术都是围绕这些分布式环境设计的。克服台式机内存和带宽限制的能力可以将其可用性扩展到大规模应用程序。在这项工作中,我们提出了一种新的混合特征提取技术,该技术结合了GPU加速的聚类和supervoxels的多分辨率优势,以便处理标准台式PC上的大规模数据集。此外,这与基于用户驱动的基于不确定性的细化方法配合使用,可将提取结果增强到所需的细节水平。我们通过使用大量体积数据集的许多特定于应用程序的示例来证明该技术的有效性和交互性。

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