Ch.9 Bayesian Models of Sensory Cue Integration 2008. 12. 29 (Mon) Summarized and Presented by J.W....

Post on 08-Jan-2018

218 views 0 download

description

Introduction Sensory Cues –Uncertain information  ambiguity –Mitigated by factors Factors –Integrating multiple cues –Objects have statistical regularities Bayesian Probability Theory –Provides a framework for modeling to way to combine multiple cue information and prior knowledge –Provides predictive theories how human sensory systems make perceptual inferences 3

Transcript of Ch.9 Bayesian Models of Sensory Cue Integration 2008. 12. 29 (Mon) Summarized and Presented by J.W....

Ch.9 Bayesian Models of Sensory Cue Integration

2008. 12. 29 (Mon)Summarized and Presented by J.W.

Ha

2

Main Objects

• Modeling multiple cues on subjects• Mainly 3D visual perception• Ambiguity, Regularity Integration• Using Bayesian formula• Constraints Prior • Estimates Likelihood• Cue Integration Bayesian approaches

3

Introduction

• Sensory Cues– Uncertain information ambiguity– Mitigated by factors

• Factors– Integrating multiple cues– Objects have statistical regularities

• Bayesian Probability Theory– Provides a framework for modeling to way to com-

bine multiple cue information and prior knowledge– Provides predictive theories how human sensory

systems make perceptual inferences

4

Basics

• Fig 9.1

5

Basics

• Bayesian Formula

– Posterior is proportional to likelihood function asso-ciated with each cue and prior

• When one cue is less certain than another, the integrated estimate should be biased to-ward the more reliable cue

6

PSYCHOPHYSICAL TESTS OF BAYESIAN CUE INTE-GRATION

7

The Linear Case

• Integrated sum of cues– z = f(z1, z2) = w1z1 + w2z2 + k – w1/w2 = σ2

2/σ12

• Discrimination thresholds– The difference in the value of z needed by an ob-

server to correctly discriminate stimuli over 75%– For Gaussian model, T is proportional to standard

deviation of internal perceptual representations– w1/w2 = σ2

2/σ12 = T2

2/T12

– By measuring T, predict w

8

The Linear Case

• Fig 9.3

– Relation between texture and slant– Observers will give more weight to texture cues at

high slants

9

• Fig 9.4

– In high slant, low texture thresholds– The gap at b) occurs due to difference single cue

from combined cue

10

A Nonlinear Case

• In case that the likelihood function is not a Gaussian– The sensory noise is Gaussian as a result of the

nonlinear mapping from sensory feature space to the parameter space being estimated

• Skew symmetry– Fig 9.5

11

A Nonlinear Case

• Fig 9.7 : Spin-dependent biases

12

A Nonlinear Case

• Fig 9.7 : Subject’s data along with model pre-diction

13

PSYCHOPHYSICAL TESTS OF BAYESIAN PRIORS

14

Psychophysical Tests of Bayesian Priors

• 3D vision problem– An ill-posed problem– Inherent ambiguity of inverting the 3D to 2D per-

spective projection and in part due to noise in the image

– Highly structured prior knowledge• Priori constraints

– Prior knowledge– 3D shape

• Motion (rigidity, elastic motion)• Surface contours (isotropy, symmetry)

15

Psychophysical Tests of Bayesian Priors• Fig 9.8

16

Psychophysical Tests of Bayesian Priors

• Fig 9.9

17

MIXTURE MODELS, PRI-ORS AND CUE INTEGRA-TION

18

Model Self-Selection

• Interpreting 3D cues Model Selection– Single cue provides the information necessary to

determine when a particular prior should be applied– Other cues resolve ambiguities

• Nuisance parameters

19

Model Self-Selection

• Estimating surface orientation from texture

20

Model Self-Selection

• Fig 9.12

– The result of an experiment designed to test whether and how subjects switch between isotropic and anisotropic models