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Offline Signature Verification Using Real Adaboost Classifier Combination of Pseudo-dynamic Features

机译:脱机签名验证使用伪动态功能的真实Adaboost分类器组合

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We present an offline signature verification system using three different pseudo-dynamic features, two different classifier training approaches and two datasets. One of the most difficult problems of off-line signature verification is that the signature is just a static image while losing a lot of useful dynamic information. Three separate pseudo-dynamic features based on gray level: local binary pattern (LBP), gray level co-occurrence matrix (GLCM) and histogram of oriented gradients (HOG) are used. The classification is performed using writer-dependent Support Vector Machine (SVMs) classifiers and Global Real Adaboost method, where two different approaches to train the classifier. In the first mode, each SVM is trained with the feature vectors obtained from the reference signatures of the corresponding user and those random forgeries for each signer while the global Adaboost classifier is trained using genuine and random forgery signatures of signers that are excluded from the test set. The fusion of all features achieves the best result of 7.66% and 9.94% equal error rate in GPDS while 7.55% and 11.55% equal error rate in CSD respectively.
机译:我们使用三种不同的伪动态功能,两个不同的分类器培训方法和两个数据集提供了一个离线签名验证系统。离线签名验证最困难的问题之一是,签名只是一个静态图像,同时丢失了很多有用的动态信息。基于灰度的三个独立的伪动态特征:使用局部二进制模式(LBP),灰度级共发生矩阵(GLCM)和面向梯度(HOG)的直方图。使用Wreater依赖支持向量机(SVM)分类器和全局真实Adaboost方法进行分类,其中两种不同的培训分类器的方法。在第一模式中,每个SVM训练,其中来自相应用户的参考签名和每个签名者的那些随机伪造者的特征向量训练,而全球adaboost分类器使用从测试中排除的签名者的真实和随机伪造签名训练放。所有功能的融合可以在GPDS中实现7.66%和9.94%的错误率,分别在CSD中的7.55%和11.55%相同的错误率。

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