时变数据gpu加速体绘制的智能压缩方案

Yi Cao, Guoqing Wu, Huawei Wang
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引用次数: 8

摘要

大规模时变数据的可视化可以让科学家更深入地了解海量数据背后固有的物理现象。然而,由于数据访问速度的不均匀和内存容量的瓶颈,大规模时变数据的交互呈现能力仍然是一个主要的挑战。数据压缩可以缓解这两个瓶颈。但仅仅将数据压缩策略应用到可视化管道中,由于体数据中仍然存在大量冗余数据,无法有效解决交互问题。本文提出了一种基于信息理论的智能压缩方案,以加速大规模时变体绘制。提出了一种熵的计算公式,可以自动计算数据的重要度,帮助科学家从海量数据中分析和提取特征。然后直接对这些特征数据进行有损数据压缩和数据传输,在此过程中丢弃剩余的非关键数据,采用GPU光线投射体渲染进行快速渲染。实验结果表明,我们的智能压缩方案可以在保持数据特征的同时尽可能地减少数据量,从而在处理大规模时变数据时也大大提高了时变体绘制速度。
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A Smart Compression Scheme for GPU-Accelerated Volume Rendering of Time-Varying Data
The visualization of large-scale time-varying data can provide scientists a more in-depth understanding of the inherent physical phenomena behind the massive data. However, because of non-uniform data access speed and memory capacity bottlenecks, the interactive rendering ability for large-scale time-varying data is still a major challenge. Data compression can alleviate these two bottlenecks. But just simply applying the data compression strategy to the visualization pipeline, the interaction problem can not be effectively solved because a lot of redundant data still existed in volume data. In this paper, a smart compression scheme based on the information theory is present to accelerate large-scale time-varying volume rendering. A formula of entropy was proposed, which can be used to automatically calculate the data importance to help scientists analyze and extract feature from the massive data. Then lossy data compression and data transfer is directly operated on these feature data, the remaining non-critical data was discarded in the process, and GPU ray-casting volume render is used for fast rendering. The experiment results shown that our smart compression scheme can reduce the amount of data as much as possible while maintaining the characteristics of the data, and therefore greatly improved the time-varying volume rendering speed even when dealing with the large scale time-varying data.
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