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A novel spatio-temporal Siamese network for 3D signature recognition

机译:用于3D签名识别的新型时空暹罗网络

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Signature forgery is at the centre of several fraudulent activities and legal battles. The introduction of 3D signatures, the virtual signing of ones name in the air, has the potential to restrict forgers due to the absence of visual cues that can be easily copied. Existing 3D signature recognition approaches, however, have not leveraged the inherent spatial and temporal information, making it difficult to handle the diminished separability and reproducibility of these signatures. In this paper, we propose a novel spatiotemporal adaptation of the Siamese Neural Network, wherein one branch extracts spatial features using a 1D Convolutional Neural Network (CNN) while the other processes the input in the temporal domain using Long Short-Term Memory networks (LSTMs). Unlike conventional deep learning networks, Siamese networks are an application of One-Shot Learning so as to learn from a small amount of data as is often the case in real life problems. They employ a distance metric that is forced to be small for like samples (signatures from the same person), and large for different samples (from different persons). The proposed approach, termed ST-SNN, is compared to other baseline classification architectures, and demonstrated using a publicly available biometric 3D signature benchmark dataset, yielding True Positive Rate (TPR) of 94.63% with 4.1% False Acceptance Rate (FAR).(c) 2021 Elsevier B.V. All rights reserved.
机译:签名伪造在几项欺诈活动和法律战斗的中心。 3D签名的引入,空中名称的虚拟签约,由于缺乏可以容易复制的视觉提示而有可能限制伪造。然而,现有的3D签名识别方法没有利用固有的空间和时间信息,使得难以处理这些签名的降低的可分离性和再现性。在本文中,我们提出了一种对暹罗神经网络的新时尚适应性,其中一个分支利用1D卷积神经网络(CNN)提取空间特征,而另一个分支使用长的短期存储器网络(LSTMS)处理时间域中的输入。 )。与传统的深度学习网络不同,暹罗网络是一次性学习的应用,以便从少量数据中学习,因为通常存在的情况。它们采用距离度量,被迫像样品(来自同一个人的签名),并且对于不同的样本(来自不同人)的大小。将所提出的方法称为ST-SNN,与其他基线分类架构进行比较,并使用公共的生物识别3D签名基准数据集进行说明,产生了94.63%的真正阳性率(TPR),具有4.1%的假验收率(远)。( c)2021 Elsevier BV保留所有权利。

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