Online Handwritten Signature Verification based on FIR Filters using Discrete Fractional Cosine Transform
Loading...
Files
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Biometrics is being widely implemented in today’s society to deal with the security
requirement issues. A biometric system can either do identification or verification task. In
identification the biometric system can accept or reject identity of a person whereas
verification authenticates the person’s claimed identity from database samples. Biometric
verification technology can be divided into two branches: physiological verification and
behavioural verification. Physiological recognition includes speech, fingerprint, iris and
retinal recognition etc. Physiological recognition is used to authenticate or identify an
individual whereas Behavioural recognition examines the mannerisms of an individual for
example keyboard typing recognition, signature verification etc., these verification techniques
analyse and recognize how an individual signs his signature or uses a keyboard etc.
Signature verification is an intriguing intellectual challenge with many practical applications.
It is one of the customary ways to verify person in many countries. However, it is known that
signatures signed by same person are never precisely the same. It is widely and commonly
accepted practice for authentication of an individual. Whereas off-line signature verification
contributes very less to accurate identification, on-line signature verification has been
successfully implemented in recent researches to achieve 80%-98% of accuracy. Various
approaches have been used to implement biometric signature recognition some of which are
dynamic time warping (DTW), Bayesian Learning, Hidden Markov model (HMM), Neural
Networks, Support Vector machine (SVM) etc.
In literature, many techniques have developed given to extract online signature features. The
best field of signature verification is still under developing phase, many methodologies are
yet to be explored. One such less explored methodology is based on Fractional Transform.
Fractional Transform is generalization of classical transforms. This transform has an
additional parameter which gives an extra degree of freedom. This field is still in
development.
An algorithm for online handwritten signature verification which is based on discrete
fractional Cosine Transform (DFrCT) is used. The Experiments were performed on SVC
iv
2004 and SUSIG databases. In this system ten features of tested signature are extracted. Then
system is realized with the help of five FIR filters. After this feature vectors are calculated.
Euclidean norm of difference between the feature vectors of test signatures and reference
signatures is calculated. This Euclidean norm is compared with threshold to classify the
signatures as genuine or forgery. The equal error rate (EER) is calculated to compare the
efficiency of this method with the existing methods. It has been observed that the results of
proposed DFrCT with ten features are better than discrete cosine transform (DCT) results.
Description
M.E. (ECED)
