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Online Signature Verification with Neural Networks Classifier and Fuzzy Inference

机译:具有神经网络分类器和模糊推理的在线签名验证

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Compared to physiologically based biometric systems such as fingerprint, face, palm-vein and retina, behavioral based biometric systems such as signature, voice, gait, etc. are less popular and many are still in their infancy. A major problem is due to inconsistencies in human behavior which require more robust algorithms in their developments. In this paper, an online signature verification system is proposed based on neural networks classifier and fuzzy inference. The software has been developed with a robust validation module based on Pearsonpsilas correlation algorithm in which more consistent sets of userpsilas signature are enrolled. In this way, more consistent sets of training patterns are used to train the neural network modules based on the popular back-propagation algorithm. To increase the robustness not only the neural network threshold is used for the verification, the time and length of the signature are also calculated. A fuzzy inference module is then set up to infer the three thresholds for human-like decision outputs. The signature verification system shows better consistency and is more robust than previous designs.
机译:与基于生理学的生物识别系统相比,例如指纹,面部,棕榈静脉和视网膜,基于行为的生物识别系统,例如签名,语音,步态等不太受欢迎,许多仍在他们的初期。主要问题是由于人类行为不一致,这需要更强大的算法。本文提出了基于神经网络分类器和模糊推理的在线签名验证系统。该软件已通过基于PearsonPsilas相关算法的鲁棒验证模块开发,其中注册了更一致的userpsilas签名集。以这种方式,更一致的训练模式用于基于流行的反向传播算法训练神经网络模块。为了增加稳健性,不仅使用神经网络阈值用于验证,还计算了签名的时间和长度。然后设置模糊推断模块以推断出用于人类判定输出的三个阈值。签名验证系统显示出更好的一致性,比以前的设计更强大。

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