Exploring feature detection techniques for time-varying volumetric data

Zhifan Zhu, R. Moorhead
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引用次数: 4

Abstract

The fundamental purpose of scientific visualization is to help scientists extract information from large volumetric datasets. These multi-dimensional datasets may be either derived from observations or generated by simulations. In either case, visualization directly enhances scientific discovery, assists the validation and verification of simulation models, and helps study and predict phenomena. Although the state-of-the-art visualization techniques allow insightful presentations of datasets in various ways, the ability to discern significant features from complex data is lacking. On the other hand, lots of work has been done in the computer vision field, in attempting to automatically detect and recognize features or regions of interest in two-dimensional image data. How to extract features or locate regions of interest in visualizing high-dimensional datasets is an important area of research. We present the work we have done in exploring feature extraction techniques for time-varying three-dimensional volumetric datasets. We used an edge detection method and exploited both temporal and spatial coherences inside features to automatically locate and track the feature movement over time. The results are attractive and show that feature extraction techniques could greatly enhance visualization procedures.<>
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探索时变体积数据的特征检测技术
科学可视化的基本目的是帮助科学家从大容量数据集中提取信息。这些多维数据集可能来自观测,也可能由模拟产生。在任何一种情况下,可视化都直接增强了科学发现,有助于仿真模型的验证和验证,并有助于研究和预测现象。尽管最先进的可视化技术允许以各种方式对数据集进行有见地的表示,但缺乏从复杂数据中识别重要特征的能力。另一方面,计算机视觉领域已经做了大量的工作,试图自动检测和识别二维图像数据中的特征或感兴趣的区域。在高维数据集可视化中,如何提取特征或定位感兴趣的区域是一个重要的研究领域。我们介绍了我们在探索时变三维体积数据集的特征提取技术方面所做的工作。我们使用边缘检测方法,并利用特征内部的时间和空间相干性来自动定位和跟踪特征随时间的运动。结果很有吸引力,表明特征提取技术可以大大提高可视化程序
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