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Toward Feature-Preserving 2D and 3D Vector Field Compression

机译:朝着要保存的2D和3D矢量字段压缩

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The objective of this work is to develop error-bounded lossy compression methods to preserve topological features in 2D and 3D vector fields. Specifically, we explore the preservation of critical points in piecewise linear vector fields. We define the preservation of critical points as, without any false positive, false negative, or false type change in the decompressed data, (1) keeping each critical point in its original cell and (2) retaining the type of each critical point (e.g., saddle and attracting node). The key to our method is to adapt a vertex-wise error bound for each grid point and to compress input data together with the error bound field using a modified lossy compressor. Our compression algorithm can be also embarrassingly parallelized for large data handling and in situ processing. We benchmark our method by comparing it with existing lossy compressors in terms of false positive/negative/type rates, compression ratio, and various vector field visualizations with several scientific applications.
机译:这项工作的目的是开发错误限制的有损压缩方法,以保护2D和3D矢量字段中的拓扑功能。具体来说,我们探讨了分段线性矢量字段中的关键点的保存。我们定义了关键点的保存,而没有任何误报,假阴性或虚假缺陷或假型更改,(1)将每个临界点保持在其原始单元中和(2)保留每个临界点的类型(例如, ,马鞍和吸引节点)。我们方法的关键是调整为每个网格点绑定的顶点,并使用修改的损耗压缩机将输入数据压在一起。我们的压缩算法也可以令人尴尬地并行化,以便大量数据处理和原位处理。通过将其与具有多个科学应用的各种传染媒介场可视化的误报/负/型速率,压缩比和各种传染媒介场可视化进行比较,通过将其与现有的有损压缩机进行比较来基准。

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