统一卷格式:有效处理大体积数据集的通用系统。

Jens Krüger, Kristin Potter, Rob S Macleod, Christopher Johnson
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引用次数: 0

摘要

随着计算能力的不断提高,大小从几兆字节到千兆级的体积数据集每天生成数千次。这些数据可能来自普通来源,例如简单的日常医学成像程序,而更大的数据集可能来自基于集群的科学模拟或大规模实验的测量。在计算机科学领域,世界范围内的大量工作都投入到这些数据集的有效可视化中。作为科学可视化领域的研究人员,我们经常要面对处理来自各种来源的海量数据的任务。这些数据通常有许多不同的数据格式。在医学成像领域,DICOM标准已经得到了很好的建立,然而,大多数研究实验室使用自己的数据格式来存储和处理数据。为了简化阅读所有不同可视化程序使用的许多不同格式的任务,我们提供了一个系统,用于有效处理许多类型的大型科学数据集(参见图1中的几个示例)。虽然主要针对结构化体积数据,但UVF可以存储几乎任何类型的结构化和非结构化数据。该系统由文件格式规范和阅读器的参考实现组成。它不仅是一种通用的、易于实现的格式,而且还允许在不需要转换内存中的数据的情况下有效地呈现大多数数据集。
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Uvf - Unified Volume Format: A General System for Efficient Handling of Large Volumetric Datasets.

With the continual increase in computing power, volumetric datasets with sizes ranging from only a few megabytes to petascale are generated thousands of times per day. Such data may come from an ordinary source such as simple everyday medical imaging procedures, while larger datasets may be generated from cluster-based scientific simulations or measurements of large scale experiments. In computer science an incredible amount of work worldwide is put into the efficient visualization of these datasets. As researchers in the field of scientific visualization, we often have to face the task of handling very large data from various sources. This data usually comes in many different data formats. In medical imaging, the DICOM standard is well established, however, most research labs use their own data formats to store and process data. To simplify the task of reading the many different formats used with all of the different visualization programs, we present a system for the efficient handling of many types of large scientific datasets (see Figure 1 for just a few examples). While primarily targeted at structured volumetric data, UVF can store just about any type of structured and unstructured data. The system is composed of a file format specification with a reference implementation of a reader. It is not only a common, easy to implement format but also allows for efficient rendering of most datasets without the need to convert the data in memory.

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Uvf - Unified Volume Format: A General System for Efficient Handling of Large Volumetric Datasets. Special Issue of selected and extended InfoVis '03 papers - Guest Editor' Introduction Exploring High-D Spaces with Multiform Matrices and Small Multiples. Beamtrees: compact visualization of large hierarchies Pixel bar charts: a visualization technique for very large multi-attribute data sets?
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