基于蒙特卡罗的适应会话间可变性的签名验证更新算法

YudaiKato DaigoMuramatsu
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引用次数: 0

摘要

签名中的会话间可变性因素会导致身份验证性能下降。我们提出了一种新的算法,其中包括一个模型更新方案来纠正这种可变性。为每个用户提供了一个模型来计算一个分数,使用融合的多个距离测量相对于以前的工作。该算法包括一个更新阶段、一个训练阶段和一个测试阶段。在训练阶段,使用马尔科夫链蒙特卡罗方法对每个个体的模型参数进行采样。在测试阶段,生成的模型用于确定测试签名是否真实。在更新阶段,使用时序蒙特卡罗(SMC)算法对测试数据进行参数更新。在SMC中采用一个参数来自动调整超参数,提高了认证性能。对来自公共数据库的签名进行了几个实验。该算法的识别率为7.59%
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Signature Verification using a Monte Carlo-based Updating Algorithm Adapted to Intersession Variability
A factor known as intersession variability in signatures causes deterioration of authentication performance. We propose a novel algorithm that includes a model updating scheme to correct for this variability. A model was provided for each user to calculate a score using fused multiple distance measures with respect to previous work. The algorithm consisted of an updating phase in addition to a training phase and a testing phase. In the training phase, the model's parameters were sampled using a Markov chain Monte Carlo method for each individual. In the testing phase, the generated model was used to determine whether a test signature was genuine. In the updating phase, the parameters were updated with test data using a sequential Monte Carlo (SMC) algorithm. Adoption of a parameter for automatically adjusting a hyper parameter in SMC improved the authentication performance. Several experiments were performed on signatures from a public database. The proposed algorithm achieved an EER of 7.59%
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