A Study on Freehand Forgery Detection Using Directional Density Function and Weighted Mean Fuzzy Classifier
A Study on Freehand Forgery Detection Using Directional Density Function and Weighted Mean Fuzzy Classifier
- 동의대학교 정보통신연구소
- 정보통신연구지
- 제1집
-
2001.02103 - 111 (9 pages)
- 0
This paper is concerning off-line signature verification using a density function which is obtained by convolving the signature image with twelve-directional 5×5 gradient masks and the weighted fuzzy mean classifier. The twelve-directional density function based on Nevatia-Babu template gradient is related to the overall shape of a signature image and thus, utilized as a feature set. The weighted fuzzy mean classifier with the reference feature vectors extracted from only genuine signature samples is evaluated for the verification of freehand forgeries. The experimental results show that the proposed system can classify a signature whether genuine or forged with more than 98% overall accuracy even without any knowledge of varied freehand forgeries.
Abstract
1.Introduction
2.Preprocessing stage and Feature extraction
3.Weighted Fuzzy Mean Classifier
4.Experimental procedure and Verification results
5.Conclusion
References
(0)
(0)