330 likes | 400 Views
Natural Visualization. Steve Haroz & Kwan-Liu Ma University of California at Davis. Outline. Purpose Math Background Applying and extending existing theories InfoVis Contest Application to GUIs Summary and Conclusion. Outline. Purpose Math Background
E N D
Natural Visualization Steve Haroz & Kwan-Liu Ma University of California at Davis
Outline • Purpose • Math Background • Applying and extending existing theories • InfoVis Contest • Application to GUIs • Summary and Conclusion
Outline • Purpose • Math Background • Applying and extending existing theories • InfoVis Contest • Application to GUIs • Summary and Conclusion
Purpose • What makes for a good Visualization? • Aesthetics? • Color? • Complexity? • Beginner or Expert? Intuitive? • Can understanding the process of visualization help?
The Process 0 1 0 1 1 1 0 1 1 0 1 0 0 0 1 … Visualization Complete?
Which Representation Is Best? “Who can prove by experience the non-existence of a cause when all that experience tells us is that we do not perceive it?”
The Process 0 1 0 1 1 1 0 1 1 0 1 0 0 0 1 … Visualization
The Forgotten Stage of Visualization Hubel 1988
Purpose • Applicability of visual system knowledge • Retina “tuned” to natural images • Certain images more easily perceptible? • Is interaction aided by these “natural GUIs” ?
Outline • Purpose • Math Background • Applying and extending existing theories • InfoVis Contest • Application to GUIs • Summary and Conclusion
Spatial Frequencies • Similar to auditory frequencies • Varying intensity (light) over space
Fourier Transform • Sum of sin/cos waves
Spatial Frequencies of Natural Images • Take Fourier transform along each orientation and average • f -2 pattern • Pattern is prevalent in all natural scenes • Plot on log-log scale
Size Distribution • This pattern is explained by a ‘collage’ of objects occluding each other • These objects have a power distribution area = 2x
Outline • Purpose • Math Background • Applying and extending existing theories • InfoVis Contest • Application to GUIs • Summary and Conclusion
exponential power constant linear
Images Without Occlusion You can’t visualize what is not visible • Images with adjacent squares • Same sizing applies
exponential power constant linear
Outline • Purpose • Math Background • Applying and extending existing theories • InfoVis Contest • Application to GUIs • Summary and Conclusion
Naturalness Metric • Closeness to f-2 • Linearity
Outline • Purpose • Math Background • Applying and extending existing theories • InfoVis Contest • Application to GUIs • Summary and Conclusion
Image Analysis for GUI Study • Applications with hierarchical data • Analyze screenshots • Compare with usage data (user study) • Use statistics to find behavioral patterns
Outline • Purpose • Math Background • Applying and extending existing theories • InfoVis Contest • Application to GUIs • Summary and Conclusion
Summary and Conclusion • Visualization preference correlates with a property of the visual system • Bias-free metric may help vis generation • Utility or aesthetics? • More visual properties
Acknowledgements • Bruno Olshausen • Yue Wang