Title :
Data Visualization Optimization via Computational Modeling of Perception
Author :
Pineo, Daniel ; Ware, Colin
Author_Institution :
Center for Coastal & Ocean Mapping, Univ. of New Hampshire, Durham, NH, USA
Abstract :
We present a method for automatically evaluating and optimizing visualizations using a computational model of human vision. The method relies on a neural network simulation of early perceptual processing in the retina and primary visual cortex. The neural activity resulting from viewing flow visualizations is simulated and evaluated to produce a metric of visualization effectiveness. Visualization optimization is achieved by applying this effectiveness metric as the utility function in a hill-climbing algorithm. We apply this method to the evaluation and optimization of 2D flow visualizations, using two visualization parameterizations: streaklet-based and pixel-based. An emergent property of the streaklet-based optimization is head-to-tail streaklet alignment. It had been previously hypothesized the effectiveness of head-to-tail alignment results from the perceptual processing of the visual system, but this theory had not been computationally modeled. A second optimization using a pixel-based parameterization resulted in a LIC-like result. The implications in terms of the selection of primitives is discussed. We argue that computational models can be used for optimizing complex visualizations. In addition, we argue that they can provide a means of computationally evaluating perceptual theories of visualization, and as a method for quality control of display methods.
Keywords :
biology computing; data visualisation; digital simulation; eye; neural nets; visual perception; 2D flow visualizations; LIC-like result; data visualization optimization; head-to-tail streaklet alignment; hill-climbing algorithm; human vision computational model; neural network simulation; perception computational modeling; pixel-based parameterization; primary visual cortex; retina; streaklet-based optimization; Computational modeling; Data models; Data visualization; Image color analysis; Neurons; Retina; Visualization; Information visualization; human information processing; neural nets; optimization.; perception; Computer Graphics; Computer Simulation; Humans; Models, Neurological; Nerve Net; Retina; Visual Cortex; Visual Perception;
Journal_Title :
Visualization and Computer Graphics, IEEE Transactions on
DOI :
10.1109/TVCG.2011.52