Claims
- 1. A method of classifying an image, comprising:
recording the image in numeric format; determining curvature features of the image; modulating a structuring element based on the curvature features; applying a grid to the image; superimposing the structuring element on the grid; and formulating a feature vector for the image using a morphology calculation at points on the grid.
- 2. The method of claim 1, wherein the structuring element is a cylinder.
- 3. The method of claim 1, wherein the step of determining curvature features of the image includes determining a gradient of intensity variation across pixels of the image.
- 4. The method of claim 3, wherein the step of determining curvature features of the image further includes applying Gaussian derivative and filtering to the gradient of intensity variation across pixels of the image to form a principal feature map.
- 5. The method of claim 1, further including:
storing feature vectors for known images in a database; determining a feature vector for an unknown image; and comparing the feature vector for the unknown image to feature vectors stored in the database to find a match.
- 6. The method of claim 5, wherein the step of comparing includes identifying a closest match based on a distance measure.
- 7. A method of identifying an unknown image, comprising:
building a database of known images, each known image having a feature vector; determining a feature vector for the unknown image by,
(a) recording the unknown image in numeric format, (b) determining curvature features of the unknown image, (c) modulating a structuring element based on the curvature features of the unknown image, (d) applying a grid to the unknown image, (e) superimposing the structuring element on the grid, and (f) formulating the feature vector for the unknown image using a morphology calculation at points on the grid; and comparing the feature vector for the unknown image to feature vectors stored in the database to find a match.
- 8. The method of claim 7, wherein the structuring element is a cylinder.
- 9. The method of claim 7, wherein the step of determining curvature features of the image includes determining a gradient of intensity variation across pixels of the image.
- 10. The method of claim 9, wherein the step of determining curvature features of the image further includes applying Gaussian derivative and filtering to the gradient of intensity variation across pixels of the image to form a principal feature map.
- 11. The method of claim 7, wherein the step of comparing includes identifying a closest match based on a distance measure.
- 12. An image classification system, comprising:
means for recording the image in numeric format; means for determining curvature features of the image; means for modulating a structuring element based on the curvature features; means for applying a grid to the image; means for superimposing the structuring element on the grid; and means for formulating a feature vector for the image using a morphology calculation at points on the grid.
- 13. The image classification system of claim 12, wherein the structuring element is a cylinder.
- 14. The image classification system of claim 12, wherein the means for determining curvature features of the image includes means for determining a gradient of intensity variation across pixels of the image.
- 15. The image classification system of claim 14, wherein the means for determining curvature features of the image further includes means for applying Gaussian derivative and filtering to the gradient of intensity variation across pixels of the image to form a principal feature map.
- 16. The image classification system of claim 1, further including:
means for storing feature vectors for known images in a database; means for determining a feature vector for an unknown image; and means for comparing the feature vector for the unknown image to feature vectors stored in the database to find a match.
- 17. The image classification system of claim 16, wherein the means for comparing includes means for identifying a closest match based on a distance measure.
- 18. A image classification method, comprising:
recording an image in numeric format; determining curvature features of the image; modulating a structuring element based on the curvature features; superimposing the structuring element over the image; and formulating a feature vector for the image using a morphology calculation at points on the image.
- 19. The image classification method of claim 18, wherein the structuring element is a cylinder.
- 20. The image classification method of claim 18, wherein the step of determining curvature features of the image includes determining a gradient of intensity variation across pixels of the image.
- 21. The image classification method of claim 20, wherein the step of determining curvature features of the image further includes applying Gaussian derivative and filtering to the gradient of intensity variation across pixels of the image to form a principal feature map.
- 22. The image classification method of claim 18, further including:
storing feature vectors for known images in a database; determining a feature vector for an unknown image; and comparing the feature vector for the unknown image to feature vectors stored in the database to find a match.
- 23. The image classification method of claim 22, wherein the step of comparing includes identifying a closest match based on a distance measure.
- 24. A mass storage device including an image classification system, the image classification system comprising the steps of:
recording an image in numeric format; determining curvature features of the image; modulating a structuring element based on the curvature features; superimposing the structuring element over the image; and formulating a feature vector for the image using a morphology calculation at points on the image.
CLAIM TO DOMESTIC PRIORITY
[0001] The present non-provisional patent application claims priority to provisional application serial No. 60/349,579, entitled “Face Classification Using Curvature-Based Multi-Scale Morphology,” filed on Jan. 18, 2002, by Madhusudhana Gargesha et al. The present non-provisional patent application further claims priority to provisional application serial No. 60/354,573, entitled “Face Classification Using Curvature-Based Multi-Scale Morphology,” filed on Feb. 6, 2002, by Madhusudhana Gargesha et al.
Provisional Applications (2)
|
Number |
Date |
Country |
|
60349579 |
Jan 2002 |
US |
|
60354573 |
Feb 2002 |
US |