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Trajectory-Based Flow Feature Tracking in Joint Particle/Volume Datasets

机译:联合粒子/体积数据集中基于轨迹的流动特征跟踪

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摘要

Studying the dynamic evolution of time-varying volumetric data is essential in countless scientific endeavors. The ability to isolate and track features of interest allows domain scientists to better manage large complex datasets both in terms of visual understanding and computational efficiency. This work presents a new trajectory-based feature tracking technique for use in joint particle/volume datasets. While traditional feature tracking approaches generally require a high temporal resolution, this method utilizes the indexed trajectories of corresponding Lagrangian particle data to efficiently track features over large jumps in time. Such a technique is especially useful for situations where the volume dataset is either temporally sparse or too large to efficiently track a feature through all intermediate timesteps. In addition, this paper presents a few other applications of this approach, such as the ability to efficiently track the internal properties of volumetric features using variables from the particle data. We demonstrate the effectiveness of this technique using real world combustion and atmospheric datasets and compare it to existing tracking methods to justify its advantages and accuracy.
机译:在无数的科学努力中,研究随时间变化的体数据的动态演化至关重要。隔离和跟踪感兴趣的特征的能力使领域科学家可以在视觉理解和计算效率方面更好地管理大型复杂数据集。这项工作提出了一种新的基于轨迹的特征跟踪技术,用于联合粒子/体积数据集中。尽管传统的特征跟踪方法通常需要较高的时间分辨率,但是该方法利用相应的拉格朗日粒子数据的索引轨迹来有效地跟踪较大的时间跃迁。对于体积数据集在时间上稀疏或太大而无法在所有中间时间步中有效跟踪要素的情况,这种技术特别有用。此外,本文还介绍了此方法的其他一些应用,例如使用粒子数据中的变量有效跟踪体积特征的内部属性的能力。我们使用现实世界的燃烧和大气数据集证明了该技术的有效性,并将其与现有的跟踪方法进行比较以证明其优势和准确性。

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