为函数和导数重建设计精确和平滑的滤波器

Torsten Möller, K. Mueller, Y. Kurzion, R. Machiraju, R. Yagel
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引用次数: 107

摘要

正确选择函数和导数重建滤波器对于获得高精度的渲染是至关重要的。大多数筛选器的选择都局限于一组常用的函数,可视化从业者到目前为止还没有办法以方便的方式说明他的偏好。使用基于频率的方法设计和规范滤波器已经做了很多工作。然而,对于可视化算法来说,根据结果重构函数的平滑性和空间重构误差来指定滤波器是更自然的。因此,作者提出了一种基于空间平滑和精度标准设计滤波器的方法。他们首先陈述了他们的设计标准,然后提供了一个过滤器设计练习的例子。它们还使用为采样数据集的体绘制和合成测试功能而设计的过滤器。他们证明,他们的结果与现有的方法相比是有利的。
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Design of accurate and smooth filters for function and derivative reconstruction
The correct choice of function and derivative reconstruction filters is paramount to obtaining highly accurate renderings. Most filter choices are limited to a set of commonly used functions, and the visualization practitioner has so far no way to state his preferences in a convenient fashion. Much work has been done towards the design and specification of filters using frequency based methods. However for visualization algorithms it is more natural to specify a filter in terms of the smoothness of the resulting reconstructed function and the spatial reconstruction error. Hence, the authors present a methodology for designing filters based on spatial smoothness and accuracy criteria. They first state their design criteria and then provide an example of a filter design exercise. They also use the filters so designed for volume rendering of sampled data sets and a synthetic test function. They demonstrate that their results compare favorably with existing methods.
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