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Cognitive Processes PSY 334 Chapter 2 – Perception.

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1 Cognitive Processes PSY 334 Chapter 2 – Perception

2 Object Recognition  Two stages: Early phase – shapes and objects are extracted from background. Later phase – shapes and objects are categorized, recognized, named.

3 Disruptions of Perception  Visual agnosias – impairment of ability to recognize objects. Demonstrate that shape extraction and shape recognition are separate processes.  Apperceptive agnosia (lateral) – problems with early processing (shape extraction).  Associative agnosia (bilateral) – problems with later processing (recognition).  Prosopagnosia – visual agnosia for faces.

4 Tests for Apperceptive Agnosia Some patients would have trouble drawing this chair due to the missing contours. Some patients would have trouble recognizing a chair from this perspective.

5 Tests for Associative Agnosia The subject can copy the anchor accurately (as shown) but then cannot tell you what it is.

6 Early Visual Processing  Parts of the eye  Two kinds of photoreceptors: Rods respond to motion, light & dark Cones respond to color, shape, detail  Fovea is the area of the retina with highest resolution – best for seeing detail. We move our eyes so light hits the fovea.

7 The Eye

8 Later Visual Processing  Neural pathways from the eyes to the visual cortex split at the optic chiasm. Info from the left visual field goes to the right hemisphere. Info from the right visual field goes to the left hemisphere.  Two pathways from the visual cortex: “Where” pathway “What” pathway

9 Pathways to the Visual Cortex

10 Pathways Forward

11 Information Coding  On-off cells in LGN feed into edge and bar detectors in the visual cortex.  Edge detectors – respond positively to light on one side of a line, negatively on the other side of the line.  Bar detectors – responds maximally to a bar of light covering its center.

12 Edge and Bar Detectors

13 Edge & Bar Detectors (Cont.)

14 Computer Edge Detection

15 Feature Maps  In addition to edges, lines, bars, other information is extracted from the visual signal: Color Motion  These aspects, called “features,” are represented in feature maps located in different areas of the brain.

16 Depth Perception  Our eyes turn a three-dimensional world into a two-dimensional image on the retina.  Our cortex turns that two-dimensional image back into three-dimensions (depth).  Cues are used to infer distance. Cues must be learned through experience. Depth cues in art: http://psych.hanover.edu/KRANTZ/art/cues.html http://psych.hanover.edu/KRANTZ/art/cues.html

17 Depth Cues

18 Optic flow Nearer things move faster, farther things move slower

19 Size Constancy is Mental

20 The same photo

21 The same photo again

22 Marr  Depth cues (texture gradient, stereopsis, motion parallax) – where are edges in space?  How are visual cues combined to form an image with depth? 2-1/2 D sketch – identifies where visual features are in relation to observer. 3-D model – refers to the representation of the objects in a scene.

23 Pattern Recognition  Classification and recognition of objects occurs through processes of pattern recognition.  Bottom-up processes – feature detection  Top-down processes -- conceptually driven processing

24 Top-Down Processing Why do we see an H in the first word but an A in the second word?

25 Gestalt Priniciples  Wertheimer, Koffka, Kohler.  Form perception – segregation of a display into objects and background.  Principles of perceptual organization allow us to see “wholes” (gestalts) formed of parts. We do not recognize objects by identifying individual features.

26 Five Principles  Proximity  Similarity  Good continuation  Closure  Common fate Elements that move together group together.  These will be on the midterm.

27 Examples (Fig 2-13) proximitysimilarity good continuation closure

28 Examples Gestalt principles of organization http://psych.hanover.edu/Krantz/sen_tut.html Illusory contours: http://psych.hanover.edu/JavaTest/Media/Chapter5/MedFig.IllusoryContour.html Reversible figures http://www.psy.ritsumei.ac.jp/~akitaoka/reversiblee.html Apparent motion demos: http://psy.ucsd.edu/~sanstis/SACamov.html http://www.michaelbach.de/ot/mot_biomot/index.html http://www.lifesci.sussex.ac.uk/home/George_Mather/BM_ECVP_2006.htm

29 Law of Pragnanz  Of all the possible interpretations, we will select the one that yields the simplest or most stable form.  Simple, symmetrical forms are seen more easily.  In compound letters, the larger figure dominates the smaller ones.

30 Law of Pragnanz People are more likely to see (b) and (c) not (d) or (e) in figure (a)

31 Visual Illusions  Depend on experience. Influenced by culture.  Illustrate normal perceptual processes. These are not errors but rather failures of perception in unusual situations.  Try some yourself: http://www.michaelbach.de/ot/

32 Visual Pattern Recognition  Bottom-up approaches: Template-matching Feature analysis Recognition by components

33 Template-Matching  A retinal image of an object is compared directly to stored patterns (templates). The object is recognized as the template that gives the best match. Used by computers to recognize patterns.  Evidence shows human recognition is more flexible than template-matching: Size, place, orientation, shape, blurred or broken (ambiguous or degraded items easily recognized by people.

34 Example from the Internet

35 Feature Analysis  Stimuli are combinations of elemental features. Features are recognized and combined. Features are like output of edge detectors.  Features are simpler, so problems of orientation, size, etc., can be solved.  Relationships among features are specified to define the pattern.

36 Features of Letters

37 Evidence for Feature Analysis  Confusions – people make more errors when letters presented at brief intervals contain similar features: G misclassified: as C (21), as O (6), as B (1), as 9 (1)  When a retinal image is held constant, the parts of the object disappear: Whole features disappear. The remaining parts form new patterns.

38 Object Recognition  Biederman’s recognition-by-components: Parts of the larger object are recognized as subobjects. Subobjects are categorized into types of geons – geometric ions. The larger object is recognized as a pattern formed by combining geons.  Only edges are needed to recognize geons.

39 Sample Geons

40 Biederman’s Stimuli

41 Tests of Biederman’s Theory  Object recognition should be mediated by recognition of object components.  Two types of degraded figures presented for brief intervals: Components (geons) missing Line segments missing  At fast intervals (65-100 ms) subjects could not recognize components when segments were missing.

42 Biederman’s Results

43 Face Recognition  Prosopagnosia – inability to recognize familiar faces.  Are faces special? Thatcher effect Damage to fusiform gyrus causes prosopagnosia. The area may also be used for fine-grained distinctions needed to recognize faces but also other objects. Bird, car & greeble experts all use it.

44 Identification of Faces and Members of Categories Prosopagnosia The Fusiform Face Area: http://www.psy.vanderbilt.edu/faculty/gauthier/picts/mona_lisa.jpg

45 Thatcher Illusion (without Thatcher)

46 Thatcher Illusion (Cont.) Why did it look more normal when viewed upside down?

47 Greebles & Faces Figure 4.24 (a) Greeble stimuli used by Gauthier. Participants were trained to name each different Greeble. (b) Brain responses to Greebles and faces before and after Greeble training. (a: From Figure 1a, p. 569, from Gauthier, I., Tarr, M. J., Anderson, A. W., Skudlarski, P. L., & Gore, J. C. (1999). Activation of the middle fusiform “face area” increases with experience in recognizing novel objects. Nature Neuroscience, 2, 568-573.)

48 Speech Recognition  The physical speech signal is not broken up into parts that correspond to recognizable units of speech. Undiminished sound energy at word boundaries – gaps are illusory. Cessation of speech energy in the middle of words. Word boundaries cannot be heard in an unfamiliar language.

49 Phoneme Perception  No one-to-one letter-to-sound correspondence.  Speech is continuous – phonemes are not discrete (separate) but run together.  Speakers vary in how they produce the same phoneme.  Coarticulation – phonemes overlap. The sound produced depends on the sound immediately preceding it.

50 Feature Analysis of Speech  Features of phonemes appear to be: Consonantal feature (consonant vs vowel). Voicing – do vocal cords vibrate or not. Place of articulation – where the vocal track is constricted (where is tongue placed).  The phoneme heard by listeners changes as you vary these features. Sounds with similar features are confused.

51 Categorical Perception  For speech, perception does not change continuously but abruptly at a category boundary.  Categorical perception – failure to perceive gradations among stimuli within a category. Pairs of [b]’s or [p]’s sound alike despite differing in voice-onset times.

52 Perception of /b/ versus /p/

53 /b/ versus /p/

54 Phoneme Perception Results Notice the abrupt shift from /b/ to /p/

55 Two Views of Categorical Perception  Weak view – stimuli are grouped into recognizable categories.  Strong view – we cannot discriminate among items within such a category.  Massaro – people can discriminate within category but have a bias to say items are the same despite differences.  Category boundaries can be shifted by fatiguing the feature detectors.

56 Top Down Processing

57  General knowledge (context, high-level thinking) combines with interpretation of low-level perceptual units (features).  Context limits the possibilities so fewer features must be processed: Word superiority effect – D or K vs WORD or WORK – words do 10% better. To xllxstxatx, I cxn rxplxce xvexy txirx lextex of x sextexce xitx an x, anx yox stxll xan xanxge xo rxad xt wixh sxme xifxicxltx.

58 Word Superiority Effect K OWRK WORK K D Subjects seeing the letter K in the context of a word did 10% better than the other conditions.

59 Context and Speech  Phoneme restoration effect: It was found that the *eel was on the axle. It was found that the *eel was on the shoe. It was found that the *eel was on the orange. It was found that the *eel was on the table.  The identification of the missing word depends on what happens after it.

60 Models of Object Perception  Two competing models explain how context and feature information are combined: Massaro’s FLMP (fuzzy logic model of perception) -- Context and detail are two independent sources of information. McClelland & Rumelhart’s PDP model – connectionist model in which both sources of information interact.

61 Testing the FLMP Model  Four kinds of stimuli: Only an e can make a real word. Only a c can make a real word. Both letters can make a word. Neither letter can make a word.  Within each group, stimuli go from e to c.  Subjects saw each stimulus word briefly and had to identify the letter, e or c.

62 Testing the Fuzzy Logic Model

63 FLMP Results  Observed frequencies for naming a letter e increase as it has more e features, but also as the context demands an e.  Baye’s theorem gives a formula for combining the independent contributions of two sources of information.  Massaro’s results conform to predictions of Baye’s theorem, suggesting that the information sources must be independent of each other.

64 Testing the PDP Model  Activation spreads from features to excite letters and from letters to excite words (bottom up processing).  Activation also spreads from words to the component letters (top-down processing).  The more activation, the more likely the correct letter will be identified: TRAP vs TRIP

65 Faces and Scenes  When parts are presented in isolation, more feature information is needed to recognize them. Face parts are recognized with less detail when in the context of a face. Subjects are better able to identify objects when they are part of coherent novel scenes rather than jumbled scenes.

66 Jumbled Scenes The same details are in both stimuli but people identify more objects when the overall scene makes sense.

67 Change Blindness  People cannot keep track of all of the information in a complex scene.  If change occurs during a scene-cut or eye movement and it fits the context, it may be missed. Large changes can be overlooked. 7 of 15 participants noticed that the person changed entirely while giving directions Demo: http://viscog.beckman.illinois.edu/djs_lab/demos.html http://viscog.beckman.illinois.edu/djs_lab/demos.html

68 Change Blindness

69 Marr  Depth cues (texture gradient, stereopsis) – where are edges in space?  How are visual cues combined to form an image with depth? Primal sketch – extracts features. 2-1/2 D sketch – identifies where visual features are in relation to observer (depth). 3-D model – refers to the representation of the objects in a scene, combines context.

70 Stages in Marr’s Model

71 Putting it All Together  The output of these stages is a representation of an object and its location.  This output is used as input to higher- level cognitive processes.  Conscious awareness (a higher-level process) involves the recognition stage, but lots of processing occurs first.


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