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Boundary Aware Reconstruction of Scalar Fields

机译:标量场的边界感知重建

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In visualization, the combined role of data reconstruction and its classification plays a crucial role. In this paper we propose a novel approach that improves classification of different materials and their boundaries by combining information from the classifiers at the reconstruction stage. Our approach estimates the targeted materials' local support before performing multiple material-specific reconstructions that prevent much of the misclassification traditionally associated with transitional regions and transfer function (TF) design. With respect to previously published methods our approach offers a number of improvements and advantages. For one, it does not rely on TFs acting on derivative expressions, therefore it is less sensitive to noisy data and the classification of a single material does not depend on specialized TF widgets or specifying regions in a multidimensional TF. Additionally, improved classification is attained without increasing TF dimensionality, which promotes scalability to multivariate data. These aspects are also key in maintaining low interaction complexity. The results are simple-to-achieve visualizations that better comply with the user's understanding of discrete features within the studied object.
机译:在可视化中,数据重建及其分类的综合作用起着至关重要的作用。在本文中,我们提出了一种新颖的方法,该方法通过在重建阶段组合来自分类器的信息来改进不同材料及其边界的分类。我们的方法在执行多种特定于材料的重构之前,可以估计目标材料的本地支持,以防止传统上与过渡区域和传递函数(TF)设计相关的许多错误分类。关于以前发布的方法,我们的方法提供了许多改进和优点。一方面,它不依赖于作用于派生表达式的TF,因此它对嘈杂的数据不太敏感,并且单一材料的分类不依赖于专用TF小部件或在多维TF中指定区域。另外,在不增加TF维数的情况下实现了改进的分类,这提高了对多变量数据的可伸缩性。这些方面也是保持较低交互复杂性的关键。结果是易于实现的可视化效果,更好地符合了用户对研究对象内离散特征的理解。

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