拓扑控制有损压缩

Maxime Soler, Mélanie Plainchault, B. Conche, Julien Tierny
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引用次数: 27

摘要

本文提出了一种具有拓扑控制的二维或三维规则网格标量数据有损压缩新算法。某些技术允许用户控制由压缩引起的逐点误差。然而,在许多情况下,为了保证事后数据分析的结果,需要以类似的方式控制保存高级概念(如拓扑特征)。本文提出了第一种支持严格控制拓扑特征损失的标量数据压缩技术。它为用户提供了具体的保证,既保留了重要的特征,又保证了压缩过程中被破坏的较小特征的大小。特别地,我们提出了一种基于范围拓扑自适应量化的简单压缩策略。我们的算法为输入和解压缩数据的持久性图之间的瓶颈距离提供了强有力的保证,特别是那些与极值相关的数据。对我们的策略进行简单的扩展,还可以控制逐点误差。我们还展示了如何将我们的方法与最先进的压缩机相结合,以进一步改善几何重建。大量的实验,对于可比的压缩率,证明了我们的算法在拓扑特征的保存方面的优势。我们通过说明对模拟或获取的数据集在输入和解压缩数据上执行的事后拓扑数据分析管道的输出之间的兼容性来展示我们方法的实用性。我们还为我们的方法提供了一个轻量级的基于vtc的c++实现,用于复制目的。
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Topologically Controlled Lossy Compression
This paper presents a new algorithm for the lossy compression of scalar data defined on 2D or 3D regular grids, with topological control. Certain techniques allow users to control the pointwise error induced by the compression. However, in many scenarios it is desirable to control in a similar way the preservation of higher-level notions, such as topological features, in order to provide guarantees on the outcome of post-hoc data analyses. This paper presents the first compression technique for scalar data which supports a strictly controlled loss of topological features. It provides users with specific guarantees both on the preservation of the important features and on the size of the smaller features destroyed during compression. In particular, we present a simple compression strategy based on a topologically adaptive quantization of the range. Our algorithm provides strong guarantees on the bottleneck distance between persistence diagrams of the input and decompressed data, specifically those associated with extrema. A simple extension of our strategy additionally enables a control on the pointwise error. We also show how to combine our approach with state-of-the-art compressors, to further improve the geometrical reconstruction. Extensive experiments, for comparable compression rates, demonstrate the superiority of our algorithm in terms of the preservation of topological features. We show the utility of our approach by illustrating the compatibility between the output of post-hoc topological data analysis pipelines, executed on the input and decompressed data, for simulated or acquired data sets. We also provide a lightweight VTK-based C++ implementation of our approach for reproduction purposes.
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