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A comparison of SVM and HMM classifiers in the off-line signature verification

机译:离线签名验证中SVM和HMM分类器的比较

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The SVM is a new classification technique in the field of statistical learning theory which has been applied with success in pattern recognition applications like face and speaker recognition, while the HMM has been found to be a powerful statistical technique which is applied to handwriting recognition and signature verification. This paper reports on a comparison of the two classifiers in off-line signature verification. For this purpose, an appropriate learning and testing protocol was created to observe the capability of the classifiers to absorb intrapersonal variability and highlight interpersonal similarity using random, simple and simulated forgeries.
机译:SVM是统计学习理论领域中的一种新的分类技术,已成功应用于人脸和说话人识别等模式识别应用中,而HMM被认为是一种强大的统计技术,可用于手写识别和签名验证。本文报告了离线签名验证中两个分类器的比较。为此,创建了一个适当的学习和测试协议,以观察分类器吸收人际变异性并使用随机,简单和模拟伪造突出人际相似性的能力。

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