Off-line handwritten signature recognition based on genetic algorithm and euclidean distance

Iman Subhi Mohammed, Maher Khalaf Hussien
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Abstract

Biometric authentication is a technology that has become significant in the high level of personal identity security. This paper provides a signature recognition system. This paper provides a static signature recognition system (SSRS). We have classified the signature in two ways. The first method uses the genetic algorithm (GA), considering that the signature is the chromosome with 35 genes, and each feature is a gene. With applying the processes of the GA between chromosomes and the formation of generations in sequence until we reach the optimal solution by finding the chromosome closest to the chromosome that enters the system. In the second method, we have classified the signature by calculating the Euclidean Distance between the query signature and the signatures stored in the database. The signature closest to a confirmed threshold is considered the desired goal. The database uses 25 handwritten signatures (15 signatures for training and five original signatures, and five fake signatures written by other people for testing), so we have a database of 500 signatures. With a 94% discrimination rate, the genetic recognition system (GRS) was able to access the solutions, and with a (91% rate) the euclidean recognition system (ERS) was done. The application uses MATLAB.
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基于遗传算法和欧氏距离的离线手写签名识别
生物特征认证技术在高层次的个人身份安全方面已经成为一项重要的技术。本文提供了一个签名识别系统。提出了一种静态签名识别系统(SSRS)。我们将签名分为两类。第一种方法使用遗传算法(GA),考虑到签名是包含35个基因的染色体,每个特征是一个基因。通过在染色体之间应用遗传算法,并按顺序形成世代,直到我们找到最接近进入系统的染色体的最优解。在第二种方法中,我们通过计算查询签名与数据库中存储的签名之间的欧氏距离对签名进行分类。最接近已确认阈值的签名被认为是期望的目标。数据库使用了25个手写签名(15个签名用于培训,5个原始签名,5个假签名用于测试),所以我们有一个500个签名的数据库。遗传识别系统(GRS)的识别率为94%,欧几里得识别系统(ERS)的识别率为91%。该应用程序使用MATLAB。
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来源期刊
IAES International Journal of Artificial Intelligence
IAES International Journal of Artificial Intelligence Decision Sciences-Information Systems and Management
CiteScore
3.90
自引率
0.00%
发文量
170
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