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The Method of Predicting Changes of a Dynamic Signature Using Possibilities of Population-Based Algorithms

机译:基于人口算法的可能性预测动态签名变化的方法

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Verification of a signature on the basis of its dynamics is an important issue of biometrics. This kind signature is called the dynamic signature. It can be represented, among others, by the set of features determined on the basis of time characteristics: pen velocity, pen pressure on the surface of a graphics tablet, etc. Values of the features can change over time, individually for each signer. Our previous research was related to the prediction of these changes to increase the effectiveness of a signature verification process. This approach was effective. The main purpose of this work is to compare the effectiveness of the methods for a prediction of signature features changes using selected population-based algorithms. They are used for learning of the fuzzy system used for prediction. Tests of the proposed approach were performed using ATVS-SLT DB database of the dynamic signatures.
机译:根据签名的动态性验证签名是生物识别的重要问题。这种签名称为动态签名。除其他外,它可以由根据时间特性确定的一组功能来表示:笔速度,图形输入板表面上的笔压力等。这些功能的值可以随时间变化,对于每个签名者而言都是独立的。我们之前的研究与这些更改的预测有关,以提高签名验证过程的有效性。这种方法是有效的。这项工作的主要目的是比较使用选定的基于人群的算法预测签名特征变化的方法的有效性。它们用于学习用于预测的模糊系统。使用ATVS-SLT动态签名的DB数据库对提出的方法进行了测试。

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