智能分析签名验证的DSP应用

R. Teymourzadeh, Waidhuba Martin Kizito, Kok Wai Chan, Mok Vee Hoong
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引用次数: 3

摘要

签名验证是一种将手写签名视为“生物特征”的认证技术。从生物识别的角度来看,本项目利用自动化手段,通过集成智能算法来执行信号增强功能,如滤波和平滑,以优化传统的生物识别系统。手写签名是一个一维Daubechies小波信号(db4),它利用离散小波变换(DWT)和离散余弦变换(DCT)共同创建一个具有d维空间的特征数据集。在提出的工作中,从每个数据源的每个特定签名中提取统计特征特征。采用Signature Verification Competition (SVC) 2004数据库和SUBCORPUS-100 MCYT双峰数据库配合设计算法。在此基础上,对大型特征向量进行降维处理。使用支持向量机(SVM)分类器算法对系统模型进行训练和评估。因此,得到的等错误率(EER)为8.7%,平均正确验证率为91.3%。
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Smart analytical signature verification for DSP applications
Signature verification is an authentication technique that considers handwritten signature as a “biometric”. From a biometric perspective, this project made use of automatic means through an integration of intelligent algorithms to perform signal enhancement function such as filtering and smoothing for optimization in conventional biometric systems. A handwritten signature is a 1-D Daubechies wavelet signal (db4) that utilizes Discrete Wavelet Transform (DWT) and Discrete Cosine Transform (DCT) collectively to create a feature dataset with d-dimensional space. In the proposed work, the statistical features characteristics are extracted from each particular signature per data source. Two databases called Signature Verification Competition (SVC) 2004 database and SUBCORPUS-100 MCYT Bimodal database are used to cooperate with the design algorithm. Furthermore, dimension reduction technique is applied to the large feature vectors. A system model is trained and evaluated using the support vector machine (SVM) classifier algorithm. Hence, an equal error rate (EER) of 8.7% and an average correct verification rate of 91.3% are obtained.
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