The Ohio State University, USA.
IEEE Trans Vis Comput Graph. 2010 Nov-Dec;16(6):1216-24. doi: 10.1109/TVCG.2010.131.
The process of visualization can be seen as a visual communication channel where the input to the channel is the raw data, and the output is the result of a visualization algorithm. From this point of view, we can evaluate the effectiveness of visualization by measuring how much information in the original data is being communicated through the visual communication channel. In this paper, we present an information-theoretic framework for flow visualization with a special focus on streamline generation. In our framework, a vector field is modeled as a distribution of directions from which Shannon's entropy is used to measure the information content in the field. The effectiveness of the streamlines displayed in visualization can be measured by first constructing a new distribution of vectors derived from the existing streamlines, and then comparing this distribution with that of the original data set using the conditional entropy. The conditional entropy between these two distributions indicates how much information in the original data remains hidden after the selected streamlines are displayed. The quality of the visualization can be improved by progressively introducing new streamlines until the conditional entropy converges to a small value. We describe the key components of our framework with detailed analysis, and show that the framework can effectively visualize 2D and 3D flow data.
可视化过程可以被视为一个视觉通信通道,其中通道的输入是原始数据,而输出是可视化算法的结果。从这个角度来看,我们可以通过测量原始数据中有多少信息通过视觉通信通道进行传输来评估可视化的有效性。在本文中,我们提出了一种面向流线生成的信息论框架来进行流场可视化。在我们的框架中,向量场被建模为方向分布,其中香农熵用于测量场中的信息量。通过首先构建一个从现有流线导出的新向量分布,然后使用条件熵将这个分布与原始数据集进行比较,就可以衡量在可视化中显示的流线的有效性。这两个分布之间的条件熵表示在显示所选流线后,原始数据中有多少信息被隐藏。通过逐步引入新的流线,可以提高可视化的质量,直到条件熵收敛到一个较小的值。我们详细分析了框架的关键组件,并展示了该框架可以有效地可视化 2D 和 3D 流场数据。