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Image and Distribution Based Volume Rendering for Large Data Sets

机译:大数据集的基于图像和分布的体绘制

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Analyzing scientific datasets created from simulations on modern supercomputers is a daunting challenge due to the fast pace at which these datasets continue to grow. Low cost post analysis machines used by scientists to view and analyze these massive datasets are severely limited by their deficiencies in storage bandwidth, capacity, and computational power. Trying to simply move these datasets to these platforms is infeasible. Any approach to view and analyze these datasets on post analysis machines will have to effectively address the inevitable problem of data loss. Image based approaches are well suited for handling very large datasets on low cost platforms. Three challenges with these approaches are how to effectively represent the original data with minimal data loss, analyze the data in regards to transfer function exploration, which is a key analysis tool, and quantify the error from data loss during analysis. We present a novel image based approach using distributions to preserve data integrity. At each view sample, view dependent data is summarized at each pixel with distributions to define a compact proxy for the original dataset. We present this representation along with how to manipulate and render large scale datasets on post analysis machines. We show that our approach is a good trade off between rendering quality and interactive speed and provides uncertainty quantification for the information that is lost.
机译:由于这些数据集持续快速增长,因此分析在现代超级计算机上通过仿真创建的科学数据集是一项艰巨的挑战。科学家用于查看和分析这些海量数据集的低成本后期分析机受到存储带宽,容量和计算能力方面的缺陷的严重限制。试图简单地将这些数据集移动到这些平台是不可行的。在后分析机器上查看和分析这些数据集的任何方法都必须有效解决不可避免的数据丢失问题。基于图像的方法非常适合在低成本平台上处理非常大的数据集。这些方法面临的三个挑战是如何以最小的数据丢失量有效地表示原始数据,如何分析作为主要分析工具的传递函数探索方面的数据,以及量化分析期间数据丢失所带来的误差。我们提出了一种使用分布来保持数据完整性的基于图像的新颖方法。在每个视图样本中,将在每个像素处汇总与视图相关的数据,并使用分布来定义原始数据集的紧凑代理。我们介绍了这种表示形式以及如何在后期分析机器上操纵和渲染大规模数据集。我们表明,我们的方法是渲染质量和交互速度之间的良好折衷,并为丢失的信息提供了不确定性量化。

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