Online Handwritten Signature Verification Method Based on Uni-Feature Correlation Coefficient between Signatures

Author:

Liu Ruonan1,Xin Yizhong1

Affiliation:

1. School of Information Science and Engineering, Shenyang University of Technology, Shenyang 110870, China

Abstract

Online handwritten signature verification is a crucial direction of research in the field of biometric recognition. Recently, many studies concerning online signature verification have attempted to improve performance using multi-feature fusion. However, few studies have provided the rationale for selecting a certain uni-feature to be fused, and few studies have investigated the contributions of a certain uni-feature in the multi-feature fusion process. This lack of research makes it challenging for future researchers in related fields to gain inspiration. Therefore, we use the uni-feature as the research object. In this paper, the uni-feature is one of the X and Y coordinates of the signature trajectory point, pen pressure, pen tilt, and pen azimuth feature. Aiming to solve the unequal length of feature vectors and the low accuracy of signature verification when using uni-features, we innovatively introduced the idea of correlation analysis and proposed a dynamic signature verification method based on the correlation coefficient of uni-features. Firstly, an alignment method of two feature vector lengths was proposed. Secondly, the correlation coefficient calculation formula was determined by analyzing the distribution type of the feature data, and then the correlation coefficient of the same uni-feature between the genuine signatures or between the genuine and forged signatures was calculated. Finally, the signature was verified by introducing a Gaussian density function model and combining it with the signature verification discrimination threshold. Experimental results showed that the proposed method could improve the performance of dynamic signature verification based on uni-features. In addition, the pen pressure feature had the best signature verification performance, with the highest signature verification accuracy of 93.46% on the SVC 2004 dataset.

Funder

National Natural Science Foundation of China

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference58 articles.

1. Ding, X.Q., and Li, X. (2012). Computer Writer Identification and Verification Theory and Method, Tsinghua University Press. (In Chinese).

2. Online handwritten signature verification based on the most stable feature and partition;Yang;Clust. Comput.,2019

3. Automatic signature verification: The state of the art-1989–1993;Leclerc;Int. J. Pattern Recognit. Artif. Intell.,1994

4. A novel approach to validate online signature using dynamic features based on locally weighted learning;Chandra;Multimed. Tools Appl.,2022

5. COMPOSV: Compound feature extraction and depthwise separable convolution-based online signature verification;Vorugunti;Neural Comput. Appl.,2022

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