Title: GraphicalVisual Properties
1Graphical/Visual Properties
- CS 7450 - Information Visualization
- August 31, 2000
2Semiotics
- The study of symbols and how they convey meaning
- Classic book
- J. Bertin, 1983, The Semiology of Graphics
3Related Disciplines
- Psychophysics
- Applying methods of physics to measuring human
perceptual systems - How fast must light flicker until we perceive it
as constant? - What change in brightness can we perceive?
- Cognitive psychology
- Understanding how people think, here, how it
relates to perception
4Basic Symbolic Displays
- Graphs
- Charts
- Maps
- Diagrams
From S. Kosslyn, Understanding chartsand
graphs, Applied CognitivePsychology, 1989.
51. Graph
Showing the relationships between
variablesvalues in a data table
6Properties
- Graph
- Visual display that illustrates one or more
relationships among entities - Shorthand way to present information
- Allows a trend, pattern or comparison to be
easily comprehended
7Issues
- Critical to remain task-centric
- Why do you need a graph?
- What questions are being answered?
- What data is needed to answer those questions?
- Who is the audience?
money
time
8Graph Components
- Framework
- Measurement types, scale
- Content
- Marks, lines, points
- Labels
- Title, axes, ticks
9Common Graph Formats
Line graph
Bar graph
Scatter plot
Y-axis is quantitativevariable Compare relative
pointvalues
Two variables, want tosee relationship Is there
a linear, curved orrandom pattern?
Y-axis is quantitativevariable See changes
overconsecutive values
10Graphing Guidelines
- Independent vs. dependent variables
- Put independent on x-axis
- See resultant dependent variables along y-axis
- If there are two independent variables, often
place them along the 2 axes (you choose which)
and then the mark may encode the dependent
variable
111,2,3 Variables
A B C D E 1 4 1 8 3 5
A B C D E 1 4 1 8 3 5 2 6 3 4 2 1
A B C D E 1 4 1 8 3 5 2 6 3 4 2 1 3 5 7 2 4 3
122. Chart
- Structure is important, relates entities to each
other - Primarily uses lines, enclosure, position to
link entities
Examples flowchart, family tree, org chart, ...
133. Map
- Representation of spatial relations
- Locations identified by labels
144. Diagram
- Schematic picture of object or entity
- Parts are symbolic
Examples figures, steps in a manual,
illustrations,...
15Details
- What are the constituent pieces of these four
symbolic displays? - What are the building blocks?
16Visual Structures
- Composed of
- Spatial substrate
- Marks
- Graphical properties of marks
17Space
- Visually dominant
- Often put axes on space to assist
- Use techniques of composition, alignment,
folding, recursion, overloadingto 1) increase
use of space 2) do data encodings
18Marks
- Things that occur in space
- Points
- Lines
- Areas
- Volumes
19Graphical Properties
- Size, shape, color, orientation...
Spatial properties
Object properties
Position Size
Expressing extent
Grayscale
Color Shape Texture
Differentiating marks
Orientation
20Preattentive Processing
- How does human visual system analyze images?
- Some things seem to be done preattentively,
without the need for focused attention - Generally less than 200-250 msecs (eye movements
take 200 msecs) - Seems to be done in parallel by low-level vision
system
Reference
http//www.csc.ncsu.edu/faculty/healey/PP/PP.html
Image applets
21What Kinds of Tasks?
- Target detection
- Is something there?
- Boundary detection
- Can the elements be grouped?
- Counting
- How many elements of a certain type are present?
22Example
- Determine if a red circle is present
- (2 sides of the room)
23Hue
Can be done rapidly (preattentively) by
people Surrounding objects called distractors
24Example
- Determine if a red circle is present
25Shape
Can be done preattentively by people
26Example
- Determine if a red circle is present
27Hue and Shape
- Cannot be done preattentively
- Must perform a sequential search
- Conjuction of features (shape and hue) causes it
28Example
- Is there a boundary in the display?
29Fill and Shape
- Left can be done preattentively since each
group contains one unique feature - Right cannot (there is a boundary!) since the
two features are mixed (fill and shape)
30Example
- Is there a boundary in the display?
31Hue versus Shape
Left Boundary detected preattentively based
on hue regardless of shape Right Cannot do
mixed color shapes preattentively
32Example
33Hue versus brightness
Left Varying brightness seems to
interfere Right Boundary based on brightness can
be done preattentively
34Preattentive Features
- Certain visual forms lend themselves to
preattentive processing - Variety of forms seem to work
35Textons
1. Elongated blobs 2. Terminators 3. Crossings of
lines
All detected early
363-D Figures
3-D visual reality has an influence
37Emergent Features
38Potential PA Features
hue intensity flicker direction of
motion binocular lustre stereoscopic depth 3-D
depth cues lighting direction
length width size curvature number terminators int
ersection closure
39Color
- Sensory response to electromagneticradiation in
the spectrum betweenwavelengths 0.4 - 0.7
micrometers
0.5
10-1
10-6
105
108
visible
gamma
ultraviolet
microwave
tv
40Color Models
- HVS model
- Hue - what people think of color
- Value - light/dark, ranges blacklt--gtwhite
- Saturation - intensity, ranges huelt--gtgray
white
Value
Hue
Saturation
black
41Color Schemes
Order these (low-gthi)
42Color Schemes
Gray scale
Single sequence part spectral scale
Full spectral scale
Single sequence single hue scale
Double-ended multiple hue scale
43Color Purposes
- Call attention to specific data
- Increase appeal, memorability
- Increase number of dimensions for encoding data
44Using Color
- Modesty! Less is more
- Use blue in large regions, not thin lines
- Use red and green in the center of the field of
view (edges of retina not sensitive to these) - Use black, white, yellow in periphery
- Use adjacent colors that vary in hue value
45Using Color
- Do not use adjacent colors that vary in amount of
blue - Dont use high saturation, spectrally extreme
colors together (causes after images) - Use color for grouping and search
- Beware effects from adjacent color regions (house
example)
46Great Book on Topic
Information Visualization Perception for
Design Colin Ware Academic Press, 2000
47Sources Used
Card, Mackinlay, Shneiderman, Information
Vis Healey website and article Marti Hearst SIMS
247 lectures Kosslyn 89 article A. Marcus,
Graphic Design for Electronic Documents and
User Interfaces M. Monmonier, How to Lie with
Maps C. Ware, Information Visualization W.
Cleveland, The Elements of Graphing
Data http//www.csc.ncsu.edu/faculty/healey/PP/PP.
html