Title: Foundations of Visual Perception
1Foundations of Visual Perception
- Peter Robinson
- School of Physics, University of Sydney
- Brain Dynamics Center, Westmead Hospital
- University of Sydney
- Faculty of Medicine, University of Sydney
2Overview
- The Visual System.
- The Binding Problem and Gamma Oscillations.
- Brain Modeling.
3Primary Visual Pathways
Kandel, Schwartz, Jessell (1995)
4Eye Retina LGN V1
Kandel, Schwartz, Jessell (1995)
- retinal connections highlight edges, etc.
- 100 million cells, only 1 million fibers
- in optic nerve.
- LGN has 6 layers
- 3 ipsilateral (I), 3 contralateral (C).
- 2 magnocellular (movement, depth).
- 4 parvocellular (color, form).
5Retinotopic mapping
- 1-1 primary mapping from retina to V1.
- Central field (fovea) is disproportionately
represented. - Demonstrated by primate experiments.
- Ocular dominance (OD) columns are seen
de Valois de Valois (1990)
6Ocular Dominance and Orientation Preference
- Orientation preference (OP) varies with
- position in each OD band.
- Singularities, or pinwheels, occur mostly
- near OD band centers.
- V1 is tessellated into hypercolumns.
- Each hypercolumn corresponds to a
- discrete visual field (VF).
Kandel, Schwartz, Jessell (1995)
7Patchy connections in V1
- Mid-range (few mm) cells in V1 have patchy
connections. - Preferentially connect similar feature
preferences. - Seen in tree shrew OP data
Bosking, Zhang, Schofield Fitzpatrick (1997)
8The Binding Problem
- Scenes are broken down and analyzed via many
pathways, each with - different feature preference.
- How are these disparate features bound into a
single percept? - How are different objects distinguished?
Shadlen et. al. (1999)
Dworetzky (1994)
9Gamma Oscillations
- Firing of cells in visual cortex can be highly
correlated. - Correlation functions (CFs) measure commonality
of - firing.
- CFs are highest for nearby cells with similar
feature - preference and fall off with separation and
disparity. - Do gamma oscillations mediate binding,
- or are they epiphenomena?
Engel, Konig, Kreiter, Schillen, Singer (1992)
10Modeling
- We use a continuum model at scales of 0.1 mm to
whole brain - Cortex is approximated as 2D.
- 1-1corticothalamic mapping.
- Include neural and anatomical properties on
scales from synapses to whole brain. - Average over scales below about 0.1 mm.
- Seek equations for resulting neural activity.
- Such models date from 1970s on Nunez, Wilson,
Cowan, Lopes da Silva, Freeman, - Wright, Liley, Jirsa, Haken, Sydney group, and
others.
11Neurons
- Neural firing underlies all emergent phenomena.
- Excitatory (e) neurons excite others.
- Inhibitory (i) neurons suppress others.
- Inputs via synapses on dendrites.
- Voltage spikes fired when a threshold is
reached. - Spikes travel to other neurons via axon
terminals. - Cortex contains
- Long-range (several cm) excitatory neurons.
- Mid-range (several mm) excitatory neurons.
- Short-range (lt 1 mm) excitatory neurons.
- Short-range (lt 1 mm) inhibitory neurons.
Kandel, Schwartz, Jessell (2000)
12Overview of Model Outcomes
- Steady states, linear properties, nonlinear
dynamics
13Gamma Correlations
- 1 long bar crossing different VFs produces a
- stronger correlation than 2 separate short bars.
- No correlation for oppositely moving short bars.
- Consistent with summation over subfeatures.
- Consistent with infill of missing contours.
Dworetzky (1994)
Engel, Konig, Kreiter, Schillen, Singer (1992)
14Scene Segmentation
S1S2
- How do spikes know theyre related.
- Conflicting stimuli presented to 4 sites
- 1 and 2 have vertical OP.
- 3 and 4 have horizontal OP.
- Correlations segment the scene into objects
- Theory explains this effect
S1
S2
S3
Engel, Konig, Singer (2002)
15Summary
- Each stage in visual processing extracts
higher-order information, but in multiple - channels.
- Binding must occur to interrelate these
features. - V1 exhibits gamma correlations between cells
stimulated by related features. - Physiologically-based brain modeling has been
verified against multiple experiments. - Modeling patchy connections explains numerous
gamma phenomena, including - frequencies, wavelengths.
- correlation properties.
- scene segmentation.
- gamma waves obey the Schroedinger equation.
- Longer talk ANU Res. School Phys. Sci. Eng.,
Thu. 20 July.
16Further Visual Pathways
- Deal with motion, color, depth, form, etc. in
more detail. - Link with memory, learning, motor outputs, etc.
Koch (2004)
Koch (2004)