Claims
- 1. Handwriting recognition apparatus, comprising:
- handwriting transducer means having an output providing x-y coordinate information generated by a writer while writing characters;
- first extracting means, having an input coupled to said output of said handwriting transducer means, for extracting and outputting temporally-based feature vectors from the x-y coordinate information;
- first training means, responsive to the temporally-based feature vectors, for providing and storing first corresponding character prototypes based on K-means Euclidean clustering and K-means Gaussian clustering of the temporally-based feature vectors;
- second extracting means, having an input coupled to said output of said handwriting transducer means, for extracting and outputting shape-based feature vectors from the x-y coordinate information; and
- second training means, responsive to the shape-based feature vectors, for providing and storing second corresponding character prototypes based on K-means Euclidean clustering and K-means Gaussian clustering of the shape-based feature vectors.
- 2. Handwriting recognition apparatus, comprising:
- handwriting transducer means having an output providing x-y coordinate information generated by a writer while writing characters;
- first extracting means, having an input coupled to said output of said handwriting transducer means, for extracting and outputting temporally-based feature vectors from the x-y-coordinate information;
- first training means, responsive to the temporally-based feature vectors, for providing first corresponding character prototypes comprised of chirographic prototypes representing portions of characters and mixture coefficients indicating how to combine the chirographic prototypes;
- second extracting means, having an input coupled to said output of said handwriting transducer means, for extracting and outputting shape-based feature vectors from the x-y coordinate information; and
- second training means, responsive to the shape-based feature vectors, for providing and storing second corresponding character prototypes based on K-means Euclidean clustering and K-means Gaussian clustering of the shape-based feature vectors.
Parent Case Info
This is a divisional of application Ser. No. 08/009,515 filed on Jan. 27, 1993, now U.S. Pat. No. 5,491,758.
US Referenced Citations (7)
Foreign Referenced Citations (3)
Number |
Date |
Country |
3822671A1 |
Nov 1990 |
DEX |
2190778A |
Nov 1987 |
GBX |
WO9205517 |
Apr 1992 |
WOX |
Non-Patent Literature Citations (1)
Entry |
C. Tappert, et al., "The State of the Art in On-Line Handwriting Recognition", IEEE, vol. 12, No. 8, pp. 787-808, Aug. 1990. |
Divisions (1)
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Number |
Date |
Country |
Parent |
09515 |
Jan 1993 |
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