Fusion of features and classifiers for off-line handwritten signature verification

Juan Hu, Youbin Chen
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引用次数: 2

Abstract

A method for writer-independent off-line handwritten signature verification based on grey level feature extraction and Real Adaboost algorithm is proposed. Firstly, both global and local features are used simultaneously. The texture information such as co-occurrence matrix and local binary pattern are analyzed and used as features. Secondly, Support Vector Machines (SVMs) and the squared Mahalanobis distance classifier are introduced. Finally, Real Adaboost algorithm is applied. Experiments on the public signature database GPDS Corpus show that our proposed method has achieved the FRR 5.64% and the FAR 5.37% which are the best so far compared with other published results.
特征与分类器融合的离线手写签名验证
提出了一种基于灰度特征提取和Real Adaboost算法的离线手写签名验证方法。首先,全局特征和局部特征同时使用。对共现矩阵和局部二值模式等纹理信息进行分析并作为特征。其次,介绍了支持向量机(svm)和马氏距离平方分类器。最后,应用Real Adaboost算法。在公共特征库GPDS语料库上进行的实验表明,与已有的研究结果相比,本文提出的方法的FRR为5.64%,FAR为5.37%,是目前为止最好的。
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