首页> 外文期刊>Neural computing & applications >Usage of autoencoders and Siamese networks for online handwritten signature verification
【24h】

Usage of autoencoders and Siamese networks for online handwritten signature verification

机译:用于在线手写签名验证的AutoEncoders和Siamese网络的用法

获取原文
获取原文并翻译 | 示例
           

摘要

In this paper, we propose a novel writer-independent global feature extraction framework for the task of automatic signature verification which aims to make robust systems for automatically distinguishing negative and positive samples. Our method consists of an autoencoder for modeling the sample space into a fixed-length latent space and a siamese network for classifying the fixed-length samples obtained from the autoencoder based on the reference samples of a subject as being genuine or forged. During our experiments, usage of attention mechanism and applying downsampling significantly improved the accuracy of the proposed framework. We evaluated our proposed framework using SigWiComp2013 Japanese and GPDSsyntheticOnLineOffLineSignature datasets. On the SigWiComp2013 Japanese dataset, we achieved 8.65% equal error rate (EER) that means 1.2% relative improvement compared to the best-reported result. Furthermore, on the GPDSsyntheticOnLineOffLineSignature dataset, we achieved average EERs of 0.13%, 0.12%, 0.21% and 0.25%, respectively, for 150, 300, 1000 and 2000 test subjects which indicate improvement in relative EER on the best-reported result by 95.67%, 95.26%, 92.9% and 91.52%, respectively. Apart from the accuracy gain, because of the nature of our proposed framework which is based on neural networks and consequently is as simple as some consecutive matrix multiplications, it has less computational cost than conventional methods such as Dynamic Time Warping and could be used concurrently on devices such as Graphics Processing Unit and Tensor Processing Unit.
机译:在本文中,我们提出了一种新的作家独立的全局特征提取框架,用于自动签名验证的任务,旨在使鲁棒系统自动区分负数和正样。我们的方法包括一个用于将样本空间建模到固定长度潜在空间的AutoEncoder和暹罗网络,用于基于受试者的参考样本作为正版或伪造的参考样本来对从AutoEncoder获得的固定长度样本进行分类。在我们的实验期间,注意机制和应用下采样的使用显着提高了所提出的框架的准确性。我们使用Sigwicomp2013日语和GPDSSyntheticonLineOfflineIgnature数据集进行了评估了我们提出的框架。在Sigwicomp2013日本数据集上,我们实现了8.65%的误差率(eer),意味着与最佳报告结果相比的相对改善1.2%。此外,在GPDSSyntheticonLineOfflinesignationAtresetet上,我们分别实现了0.13%,0.12%,0.21%和0.25%的平均升,为150,300,1000和2000检验对象,表明在最佳报告的结果上的相对eer改善了95.67 %,95.26%,92.9%和91.52%。除了准确性收益外,由于我们所提出的基于神经网络的框架的性质,因此与一些连续的矩阵乘法一样简单,它的计算成本较少,而不是动态时间翘曲,并且可以同时使用诸如图形处理单元和张量处理单元的设备。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号