Fig. 11. Illustration of a Merging Process : (a) a Region Included in a Larger Contour
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(b) merging result, (c) corresponding relational interpretation. (a) a region displaying several holes surrounded by a larger contour, (b) merging result. Fig. 13. Contour based decomposition : (a) initial region and associated contour, (b) result. Fig. 14. Illustration of final results : (a) initial image, (b) final contours, (c) final regions. Fig. 15. Illustration of final results, using a Fisher segmentation on a different image : (a) initial image , (b) initial regions, (c) initial contours, (d) final regions. Fig. 16. Illustration of final results, on a different image : (a) initial image, (b) initial regions, (c) initial contours, (d) final regions. Fig. 17. Illustration of final results, using a pyramidal segmentation : (a) initial image, (b) initial regions , (c) initial contours, (d) final regions. Figure Captions Fig. 1. Internal Structure of MAPS agents. Fig. 2. Overall task-based modelling of vision problem : numbers are used to indicate current task ordering. Fig. 3. KISS architecture : a global view. Fig. 4. KISS architecture : agents involved in the low level analysis phase. Fig. 5. KISS architecture : agents involved in the middle level analysis phase. Fig. 6. KISS architecture : agents involved in the high level analysis phase. Fig. 7. Illustration of region detection steps : (a) initial image, (b) initial image segmentation, (c) application of an intermediate size filtering, (d) resulting segmentation, (e) application of a large size filtering, (f) final segmentation. Fig. 8. Illustration of contour detection steps : (a) edge point image, (b) contour image. Fig. 9. Relations detected between (a) R1 and C1, (b) R2 and C2, (c) R3 and C3. Fig. 10. Median line based decomposition of (a) R1, (b) C1. Fig. 17. Illustration of final results, using a pyramidal segmentation : (a) initial image, (b) initial regions , (c) initial contours, (d) final regions. (a) (b) (c) (d) Fig. 16. Illustration of final results, on a different image : (a) initial image, (b) initial regions, (c) initial contours, (d) final regions. (a) (b) (c) (d) Fig. 15. Illustration of final results, using a Fisher segmentation on a different image : (a) initial image , (b) initial regions, (c) initial contours, (d) final regions. (a) (b) (c) (d) (b) merging result, (c) corresponding relational interpretation. (a) a region displaying several holes surrounded by a larger contour, (b) merging result. Fig. 13. Contour based decomposition : (a) initial region and associated contour, (b) result. Fig. …
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