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IAT 814 Introduction to Visual Analytics. Perception. Perceptual Processing. Seek to better understand visual perception and visual information processing Multiple theories or models exist Need to understand physiology and cognitive psychology. A Simple Model. Two stage process
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IAT 814 Introduction to Visual Analytics Perception IAT 814
Perceptual Processing • Seek to better understand visual perception and visual information processing • Multiple theories or models exist • Need to understand physiology and cognitive psychology IAT 814
A Simple Model • Two stage process • Parallel extraction of low-level properties of scene • Sequential goal-directed processing Stage 1 Early, parallel detection of color, texture, shape, spatial attributes Stage 2 Serial processing of object identification (using memory) and spatial layout, action Eye IAT 814
Stage 1 - Low-level, Parallel • Neurons in eye & brain responsible for different kinds of information • Orientation, color, texture, movement, etc. • Arrays of neurons work in parallel • Occurs “automatically” • Rapid • Information is transitory, briefly held in iconic store • Bottom-up data-driven model of processing • Often called “pre-attentive” processing IAT 814
Stage 2 - Sequential, Goal-Directed • Splits into subsystems for object recognition and for interacting with environment • Increasing evidence supports independence of systems for symbolic object manipulation and for locomotion & action • First subsystem then interfaces to verbal linguistic portion of brain, second interfaces to motor systems that control muscle movements IAT 814
Stage 2 Attributes • Slow serial processing • Involves working and long-term memory • Top-down processing IAT 814
Preattentive 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 IAT 814
How Many 3’s? 1281768756138976546984506985604982826762 9809858458224509856458945098450980943585 9091030209905959595772564675050678904567 8845789809821677654876364908560912949686 IAT 814
How Many 3’s? 1281768756138976546984506985604982826762 9809858458224509856458945098450980943585 9091030209905959595772564675050678904567 8845789809821677654876364908560912949686 IAT 814
What 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? IAT 814
Examples: • Where is the red circle? Left or right? • Put your hand up as soon as you see it. IAT 814
Pre-attentive Hue • Can be done rapidly IAT 814
Examples: • Where is the red circle? Left or right? • Put your hand up as soon as you see it. IAT 814
Shape IAT 814
Examples: • Where is the red circle? Left or right? • Put your hand up as soon as you see it. IAT 814
Hue and Shape • Cannot be done preattentively • Must perform a sequential search • Conjuction of features (shape and hue) causes it IAT 814
Examples • Is there a boundary: • A connected chain of features that cross the rectangle • Put your hand up as soon as you see it. IAT 814
Fill 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) IAT 814
Examples • Is there a boundary? IAT 814
Hue versus Shape • Left: Boundary detected preattentively based on hue regardless of shape • Right: Cannot do mixed color shapes preattentively IAT 814
Hue vs. Brightness • Left: Varying brightness seems to interfere • Right: Boundary based on brightness can be done preattentively IAT 814
Preattentive Features • Certain visual forms lend themselves to preattentive processing • Variety of forms seem to work • In the next slide, spot the region of different shapes, both left and right IAT 814
3-D Figures • 3-D visual reality has an influence IAT 814
Emergent Features IAT 814
Potential PA Features • length • width • size • curvature • number • terminators • intersection • closure • hue • intensity • flicker • direction of motion • stereoscopic depth • 3-D depth cues • lighting direction IAT 814
Key Perceptual Properties • Brightness • Color • Texture • Shape IAT 814
Luminance/Brightness • Luminance • Measured amount of light coming from some place • Brightness • Perceived amount of light coming from source IAT 814
Brightness • Perceived brightness is non-linear function of amount of light emitted by source Typically a power function S = aIn S - sensation I - intensity • Very different on screen versus paper IAT 814
Greyscale • Probably not best way to encode data because of contrast issues • Surface orientation and surroundings matter a great deal • Luminance channel of visual system is so fundamental to so much of perception • We can get by without color discrimination, but not luminance IAT 814
Greyscale • White and Black are not fixed IAT 814
Greyscale • White and Black are not fixed! IAT 814
Color Systems • HSV: Hue, Saturation, Value • Hue: Color type • Saturation: “Purity” of color • Value: Brightness IAT 814
CIE Space • The perceivable set of colors IAT 814
CIE L*a*b* • http://www.gamutvision.com/docs/printest.html IAT 814
Color Categories • Are there certain canonical colors? • Post & Greene ’86 had people name different colors on a monitor • Pictured are ones with > 75% commonality IAT 814
Luminance • Foreground must be distinct from background! Can you read this text? Can you read this text? Can you read this text? Can you read this text? Can you read this text? Can you read this text? IAT 814
Color for Categories • Can different colors be used for categorical variables? • Yes (with care) • Colin Ware’s suggestion: 12 colors • red, green, yellow, blue, black, white, pink, cyan, gray, orange, brown, purple IAT 814
Why 12 colors? IAT 814
Just-Noticeable Difference • Which is brighter? IAT 814
Just-Noticeable Difference • Which is brighter? (130, 130, 130) (140, 140, 140) IAT 814
Weber’s Law • In the 1830’s, Weber made measurements of the just-noticeable differences (JNDs) in the perception of weight and other sensations. • He found that for a range of stimuli, the ratio of the JND ΔS to the initial stimulus S was relatively constant: ΔS / S = k IAT 814
Weber’s Law • Ratios more important than magnitude in stimulus detection • For example: we detect the presence of a change from 100 cm to 101 cm with the same probability as we detect the presence of a change from 1 to 1.01 cm, even though the discrepancy is 1 cm in the first case and only .01 cm in the second. IAT 814
Weber’s Law • Most continuous variations in magnitude are perceived as discrete steps • Examples: contour maps, font sizes IAT 814
Weber’s Law • Most continuous variations in magnitude are perceived as discrete steps • Examples: contour maps, font sizes IAT 814
Stevens’ Power Law • Compare area of circles: IAT 814
Stevens’ Power Law s(x) = axb s is the sensation x is the intensity of the attribute a is a multiplicative constant b is the power b > 1: overestimate b < 1: underestimate [graph from Wilkinson 99] IAT 814
[Stevens 1961] Stevens’ Power Law IAT 814
Stevens’ Power Law Experimental results for b: Length .9 to 1.1 Area .6 to .9 Volume .5 to .8 Heuristic: b ~ 1/sqrt(dimensionality) IAT 814
Stevens’ Power Law • Apparent magnitude scaling [Cartography: Thematic Map Design, p. 170, Dent, 96] S = 0.98A0.87 [J. J. Flannery, The relative effectiveness of some graduated point symbols in the presentation of quantitative data, Canadian Geographer, 8(2), pp. 96-109, 1971] [slide from Pat Hanrahan] IAT 814
Relative Magnitude Estimation Most accurate Least accurate Position (common) scale Position (non-aligned) scale Length Slope Angle Area Volume Color (hue/saturation/value) IAT 814