Interactive feature extraction and tracking by utilizing region coherency

C. Muelder, K. Ma
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引用次数: 57

Abstract

The ability to extract and follow time-varying flow features in volume data generated from large-scale numerical simulations enables scientists to effectively see and validate modeled phenomena and processes. Extracted features often take much less storage space and computing resources to visualize. Most feature extraction and tracking methods first identify features of interest in each time step independently, then correspond these features in consecutive time steps of the data. Since these methods handle each time step separately, they do not use the coherency of the feature along the time dimension in the extraction process. In this paper, we present a prediction-correction method that uses a prediction step to make the best guess of the feature region in the subsequent time step, followed by growing and shrinking the border of the predicted region to coherently extract the actual feature of interest. This method makes use of the temporal-space coherency of the data to accelerate the extraction process while implicitly solving the tedious correspondence problem that previous methods focus on. Our method is low cost with very little storage overhead, and thus facilitates interactive or runtime extraction and visualization, unlike previous methods which were largely suited for batch-mode processing due to high computational cost.
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利用区域相干性的交互式特征提取与跟踪
从大规模数值模拟生成的体积数据中提取和跟踪随时间变化的流动特征的能力,使科学家能够有效地观察和验证模型现象和过程。提取的特征通常需要更少的存储空间和计算资源来可视化。大多数特征提取和跟踪方法首先在每个时间步长中独立识别感兴趣的特征,然后在数据的连续时间步长中对应这些特征。由于这些方法分别处理每个时间步长,因此在提取过程中没有利用特征沿时间维度的一致性。在本文中,我们提出了一种预测-校正方法,该方法利用预测步长在随后的时间步长中对特征区域进行最佳猜测,然后对预测区域的边界进行增长和缩小,以相干地提取实际感兴趣的特征。该方法利用数据的时空一致性加快了提取过程,同时隐含地解决了以往方法所关注的繁琐的对应问题。我们的方法成本低,存储开销很小,因此便于交互式或运行时提取和可视化,而不像以前的方法由于计算成本高而主要适用于批处理模式。
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