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Off-line handwritten signature verification using compositional synthetic generation of signatures and Siamese Neural Networks

机译:使用签名的合成合成和Siamese神经网络进行离线手写签名验证

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In this work, we propose the use of Siamese Neural Networks to help solve the off-line handwritten signature verification problem with random forgeries in a writer-independent context. Our proposed solution can be used on new signers without the need for any additional training. Also, we have analyzed three types of synthetic data to increase the amount of samples and the variability needed for training deep neural networks: augmented data samples from GAVAB dataset, a proposal of compositional synthetic signature generation from shape primitives and the GPDSSynthetic dataset. The first two approaches are "on-demand" generators and they can be used during the training stage to produce a potentially infinite number of synthetic signatures. In our approach, we initially trained Siamese Neural Networks using signatures from GAVAB dataset and different combinations of synthetic data. The best verification results were obtained when combining original and synthetic signatures for training. Additionally, we tested our approach on the GPSSynthetic, MCYT, SigComp11 and CEDAR datasets demonstrating the generalization capabilities of our proposal. (C) 2019 Elsevier B.V. All rights reserved.
机译:在这项工作中,我们建议使用暹罗神经网络来帮助解决在独立于作者的情况下具有随机伪造的离线手写签名验证问题。我们提出的解决方案可用于新的签名者,而无需任何其他培训。此外,我们分析了三种类型的合成数据,以增加训练深度神经网络所需的样本量和可变性:GAVAB数据集的增强数据样本,从形状图元和GPDSSynthetic数据集生成合成合成签名的建议。前两种方法是“按需”生成器,可以在训练阶段使用它们来生成可能无限数量的合成签名。在我们的方法中,我们最初使用GAVAB数据集的签名和合成数据的不同组合来训练暹罗神经网络。结合原始签名和合成签名进行培训时,可获得最佳的验证结果。此外,我们在GPSSynthetic,MCYT,SigComp11和CEDAR数据集上测试了我们的方法,证明了我们建议的泛化能力。 (C)2019 Elsevier B.V.保留所有权利。

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