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Giessen University Dept. of Psychology

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1 Giessen University Dept. of Psychology
Robust contour extraction and junction detection by a neural model utilizing recurrent long-range interactions Thorsten Hansen and Heiko Neumann Giessen University Dept. of Psychology Ulm University Dept. of Neural Information Processing

2 Overview of the Talk Motivation: empirical evidence for recurrent long-range interactions 2. Approach and Model 3. Results: Contour enhancement Corner detection 4. Conclusions

3 Sketch of V1 Architecture
long-range connections McGuire et al. 1991 LGN recurrent intercolumnar interactions

4 Specificity of Horizontal Long-Range Connections in V1
Bosking et al. 1997 ”like connects to like” plus colinear arrangement Long-range connections link neurons with same orientation preference and collinear aligned RFs.

5 Functional Implications of Lateral Long-Range Interactions
Polat & Sagi (1993) Measurement of contrast detection thresholds for foveal Gabor elements with and without flankers. Colinear flanking Gabors (up to a distance of 10 wavelengths) facilitate contrast detection.

6 Key Mechanisms of the Proposed Model
Excitatory long-range interactions between cells with collinear aligned RF (Bosking et al. 1997) Inhibitory short-range interactions Modulating feedback: Initial bottom-up activity is necessary (Hirsch & Gilbert 1991)

7 Model architecture

8 Recurrent Interaction
modulating feedback divisive inhibition inhibition in both spatial and orientational domain excitatory long-range interaction

9 Results: Contour Enhancement
input image complex cells long-range Activity that fits into a more global context is enhanced by top-down feedback.

10 Results: Temporal Evolution
input image complex cells long-range t= t = t=12

11 Quantitative Evaluation: Contur Saliency
High saliency: large values of (r,z) discrete time steps saliency measures z r input image

12 Results: Natural Images
input image complex cells long-range

13 Simulation: Physiological Data
Kapadia et al. 1995 Simulation: Physiological Data response relative to single bar bar +flankers +texture +flankers+texture enhancement for collinear bar; suppression for noisy textures

14 Properties of the Proposed Model
input image complex cells long-range background: noise suppression corner: preservation of multiple orientations edge: enhancement of coherent structures

15 Definition of Corners and Junctions
Corners and junctions are points where two or more lines join or intersect (from Adelson 2000)

16 Junctions for Object Recognition (Biederman 1987)

17 Junctions and Brightness Perception
Adelson (2000)

18 Junction Detection in Natural Images
Junctions often cannot be detected locally (McDermott 2001): 13 pixel closeup pixels

19 Neural Representation of Junctions
distributed activity for multiple orientations within a cortical hypercolumn 1. Robust generation of coherent contours model of recurrent long-range interactions in V1 Approach: 2. Read-out of distributed information measure of circular variance

20 Read-out of Distributed Information
Orientation significance: Length of the resulting orientation vector in relation to the overall activity high significance low significance orientation significance circular variance Batschelet 1981: Circular Statistics

21 Corner and Junction Detection
Corner candidates: high circular variance and high overall activity: Corner points: sufficiently large local maxima of corner candidates

22 Results: Localization Accuracy
deviation from true location V1 long-range model feedforward complex cells generic junction configurations

23 Junction Detection on a Synthetic Image
Attneave‘s cat complex cells long-range

24 Junction Detection on Natural Images
Real world camera image complex cells long-range

25 Junction Detection on Natural Images
cut-out of a plant image Van Hateren & van der Schaaf 1998 input image complex cells long-range

26 Evaluation using ROC Analysis
Comparison of the new scheme to standard methods based on Gaussian curvature and the structure tensor (black) input image

27 Conclusions corners and junctions can be robustly represented
by distributed activity within a cortical hypercolum recurrent colinear long-range interactions serve as a multi-purpose mechanism for contour enhancement noise suppression junction detection Hansen & Neumann (2004) Neural Computation 16(5).


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