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A parallel multiresolution volume rendering algorithm for large data visualization

机译:用于大数据可视化的并行多分辨率体绘制算法

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摘要

We present a new parallel multiresolution volume rendering algorithm for visualizing large data sets. Using the wavelet transform, the raw data is first converted to a multiresolution wavelet tree. To eliminate the data dependency between processors at run-time, and achieve load-balanced rendering, we design a novel algorithm to partition the tree and distribute the data along a hierarchical space-filling curve with error-guided bucketization. Further optimization is achieved by storing reconstructed data at pre-selected tree nodes for each processor based on the available storage resources to reduce the overall wavelet reconstruction cost. At run time, the wavelet tree is first traversed according to the user-specified error tolerance. Data blocks of different resolutions that satisfy the error tolerance are then decompressed and rendered to compose the final image in parallel. Experimental results showed that our algorithm can reduce the run-time communication cost to a minimum and ensure a well-balanced workload among processors when visualizing gigabytes of data with arbitrary error tolerances.
机译:我们提出了一种新的并行多分辨率体积渲染算法,用于可视化大型数据集。使用小波变换,原始数据首先被转换为多分辨率小波树。为了消除运行时处理器之间的数据依赖关系,并实现负载平衡的呈现,我们设计了一种新颖的算法来对树进行分区,并在带有错误引导的存储桶的分层空间填充曲线上分布数据。通过基于可用存储资源在每个处理器的预选树形节点上存储重构数据来减少总的小波重构成本,可以实现进一步的优化。在运行时,首先根据用户指定的容错性遍历小波树。然后解压缩满足误差容限的不同分辨率的数据块,并进行渲染以并行组成最终图像。实验结果表明,当可视化具有任意错误容限的千兆字节数据时,我们的算法可以将运行时通信成本降至最低,并确保处理器之间的工作负载均衡。

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