A crowding model of visual clutter.

Visual information is difficult to search and interpret when the density of the displayed information is high or the layout is chaotic. Visual information that exhibits such properties is generally referred to as being "cluttered." Clutter should be avoided in information visualizations and interface design in general because it can severely degrade task performance. Although previous studies have identified computable correlates of clutter (such as local feature variance and edge density), understanding of why humans perceive some scenes as being more cluttered than others remains limited. Here, we explore an account of clutter that is inspired by findings from visual perception studies. Specifically, we test the hypothesis that the so-called "crowding" phenomenon is an important constituent of clutter. We constructed an algorithm to predict visual clutter in arbitrary images by estimating the perceptual impairment due to crowding. After verifying that this model can reproduce crowding data we tested whether it can also predict clutter. We found that its predictions correlate well with both subjective clutter assessments and search performance in cluttered scenes. These results suggest that crowding and clutter may indeed be closely related concepts and suggest avenues for further research.

[1]  Björn N.S. Vlaskamp,et al.  Crowding degrades saccadic search performance , 2005 .

[2]  Frans W Cornelissen,et al.  On the generality of crowding: visual crowding in size, saturation, and hue compared to orientation. , 2007, Journal of vision.

[3]  J. Lund,et al.  Compulsory averaging of crowded orientation signals in human vision , 2001, Nature Neuroscience.

[4]  Matthew O. Ward,et al.  Theoretical Foundations of Information Visualization , 2008, Information Visualization.

[5]  R. A. Leibler,et al.  On Information and Sufficiency , 1951 .

[6]  Marlin L. Gendron,et al.  The role of local and global clutter in visual search , 2010 .

[7]  D. Pelli,et al.  The uncrowded window of object recognition , 2008, Nature Neuroscience.

[8]  Edward H. Adelson,et al.  The Laplacian Pyramid as a Compact Image Code , 1983, IEEE Trans. Commun..

[9]  M. Bravo,et al.  A scale invariant measure of clutter. , 2008, Journal of vision.

[10]  Hany Farid,et al.  Search for a Category Target in Clutter , 2004, Perception.

[11]  D. Levi Crowding—An essential bottleneck for object recognition: A mini-review , 2008, Vision Research.

[12]  D. Pelli,et al.  Crowding is unlike ordinary masking: distinguishing feature integration from detection. , 2004, Journal of vision.

[13]  Tracey D. Berger,et al.  Crowding and eccentricity determine reading rate. , 2007, Journal of vision.

[14]  A. Treisman,et al.  A feature-integration theory of attention , 1980, Cognitive Psychology.

[15]  Ben Shneiderman,et al.  The eyes have it: a task by data type taxonomy for information visualizations , 1996, Proceedings 1996 IEEE Symposium on Visual Languages.

[16]  D. Burr,et al.  Visual Clutter Causes High-Magnitude Errors , 2006, PLoS biology.

[17]  W. Korte,et al.  Über die Gestaltauffassung im indirekten Sehen , 1923 .

[18]  Woodie Flowers,et al.  Information content measures of visual displays , 2000, IEEE Symposium on Information Visualization 2000. INFOVIS 2000. Proceedings.

[19]  Jeremy M. Wolfe,et al.  Guided Search 4.0: Current Progress With a Model of Visual Search , 2007, Integrated Models of Cognitive Systems.

[20]  Michael Stonebraker,et al.  Constant information density in zoomable interfaces , 1998, AVI '98.

[21]  H. BOUMA,et al.  Interaction Effects in Parafoveal Letter Recognition , 1970, Nature.

[22]  H. Wilson,et al.  Lateral interactions in peripherally viewed texture arrays. , 1997, Journal of the Optical Society of America. A, Optics, image science, and vision.

[23]  Michael L. Mack,et al.  Identifying the Perceptual Dimensions of Visual Complexity of Scenes , 2004 .

[24]  Yuanzhen Li,et al.  Measuring visual clutter. , 2007, Journal of vision.

[25]  R. Rosenholtz Search asymmetries? What search asymmetries? , 2001, Perception & psychophysics.

[26]  H. Burian,et al.  A study of separation difficulty. Its relationship to visual acuity in normal and amblyopic eyes. , 1962, American journal of ophthalmology.

[27]  Kenichi Kanatani,et al.  Shape from Texture: General Principle , 1989, Artif. Intell..

[28]  James T. Enns,et al.  Building perceptual textures to visualize multidimensional datasets , 1998 .

[29]  Yuanzhen Li,et al.  Feature congestion: a measure of display clutter , 2005, CHI.

[30]  Dov Sagi,et al.  Configuration influence on crowding. , 2007, Journal of vision.

[31]  Nicolai Petkov,et al.  Contour and boundary detection improved by surround suppression of texture edges , 2004, Image Vis. Comput..