Claims
- 1. An image matching method for matching a first image and a second image, said method comprising:determining first critical points in said first image, said first critical points including at least three types of critical points; determining second critical points in said second image, said second critical points including said at least three types of critical points; detecting correspondence between said first image and said second image by matching said first critical points and said second critical points.
- 2. The image matching method of claim 1, wherein said matching said first critical points and said second critical points comprises forming a mapping for each critical point type of said at least three types of critical points between said first critical points and said second critical points.
- 3. The image matching method of claim 2, wherein said mapping for each critical point type is made in consideration of at least one other of said mappings for each critical point type.
- 4. The image matching method of claim 1, wherein said at least three types of critical points comprise a maximum, a minimum, and two types of saddlepoints.
- 5. The image matching method of claim 1, wherein said first critical points and said second critical points comprise local critical points determined in predetermined areas of said first image and said second image respectively.
- 6. The image matching method of claim 1, wherein said first critical points and said second critical points are determined based on pixel value.
- 7. The image matching method of claim 6, wherein said pixel value comprises a combination of a plurality of pixel attributes.
- 8. The image matching method of claim 6, wherein said pixel value comprises pixel intensity.
- 9. An image matching method comprising:extracting a first set of critical points from a first image by conducting a two-dimensional search over said first image, said first set of critical points including at least three types of critical points; extracting a second set of critical points from a second image by conducting a two-dimensional search over said second image, said second set of critical points including said at least three types of critical points; detecting correspondence between said first image and said second image by matching said at least three types of critical points respectively between said first image and said second image.
- 10. The image matching method of claim 9, wherein said matching said at least three types of critical points respectively comprises forming a mapping for each critical point type of said at least three types of critical points between said first set of critical points and said second set of critical points.
- 11. The image matching method of claim 10, wherein said mapping for each critical point type is made in consideration of at least one other of said mappings for each critical point type.
- 12. The image matching method of claim 9, wherein said at least three types of critical points comprise a maximum, a minimum, and a saddlepoint.
- 13. The image matching method of claim 9, wherein said first set of critical points and said second set of critical points comprise local critical points determined in predetermined areas of said first image and said second image respectively.
- 14. The image matching method of claim 9, wherein said first set of critical points and said second set of critical points are determined based on pixel value.
- 15. The image matching method of claim 14, wherein said pixel value comprises a combination of a plurality of pixel attributes.
- 16. The image matching method of claim 14, wherein said pixel value comprises pixel intensity.
- 17. An image matching method for matching a first image and a second image, said method comprising:for said first image, generating, through multiresolutional critical point filtering, first hierarchical images each having a different resolution; for said second image, generating, through multiresolutional critical point filtering, second hierarchical images each having a different resolution; matching said first hierarchical images and said second hierarchical images.
Priority Claims (1)
Number |
Date |
Country |
Kind |
9-095318 |
Mar 1997 |
JP |
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Parent Case Info
This application is a Continuation of application Ser. No. 09/433,368 (U.S. Pat. No. 6,137,910) filed Nov. 3, 1999, which is a Divisional of Ser. No. 08/848,099 (U.S. Pat. No. 6,018,592) filed Apr. 28, 1997.
US Referenced Citations (3)
Foreign Referenced Citations (1)
Number |
Date |
Country |
9-097334 |
Apr 1997 |
JP |
Non-Patent Literature Citations (2)
Entry |
Michael Kass, et al., Snakes: Active Contour Models, International Journal of Computer Vision, 321-331 (1998).* |
J. Andrew Bangham, et al., Scale-Space from Nonlinear Filters, IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 18, No. 5, May 1996. |
Continuations (1)
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Number |
Date |
Country |
Parent |
09/433368 |
Nov 1999 |
US |
Child |
09/693981 |
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US |