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OSVFuseNet: Online Signature Verification by feature fusion and depth-wise separable convolution based deep learning

机译:osvfusenet:基于深度学习的专业融合和深度明智的可分离卷积的在线签名验证

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Online Signature Verification (OSV) techniques have been deployed in production systems for decades, yet training the model for efficient classification of the test signature from fewer training signature samples is still an open challenge. The advancements in Convolutional Neural Networks (CNNs) enormously boosted the effectiveness of OSV systems. However, learning subtle and discriminating representations from few training samples to classify the genuineness of test signature has not been explored fully. In this paper, a Convolution Autoencoder (CAE) is used to obtain high-level feature representations from the input signature and these high level features are fused with handcrafted features to constitute a hybrid feature set. The hybrid set of features is presented as an input to an Online Signature Verification framework made up of Depth-wise Separable Convolutional Neural Network (DWSCNN). DWSCNN effectively learn deep feature representations with fewer training samples and parameters than traditional CNNs resulting in a light weight OSV framework. Thorough experimental analysis on three benchmark datasets MCYT-100 (DB1), SVC-2004-Task2 and SUSIG-Visual corpus confirm that the proposed hybrid fusion of feature set and DWSCNN based OSV framework achieve higher classification accuracies and outperforms many contemporary and state-of-the art OSV models. (C) 2020 Elsevier B.V. All rights reserved.
机译:在线签名验证(OSV)技术已在生产系统中部署数十年,但培训模型用于从较少培训签名样本中获得测试签名的有效分类仍然是一个开放的挑战。卷积神经网络(CNNS)的进步非常促进了OSV系统的有效性。然而,从少数培训样本中学习微妙和歧视陈述,以分类测试签名的真实性,并未完全探讨。在本文中,使用卷积AutoEncoder(CAE)从输入签名获取高级特征表示,并且这些高级功能与手工制作功能融合以构成混合功能集。混合特征集被呈现为由深度明智的可分离卷积神经网络(DWSCNN)组成的在线签名验证框架的输入。 DWSCNN有效地学习具有较少训练样本和参数的深度特征表示,而不是传统的CNN,导致轻量级OSV框架。关于三个基准数据集MCYT-100(DB1),SVC-2004-Task2和Susig-Visual Corpus的彻底实验分析证实,所提出的特征集混合融合和基于DWSCNN的OSV框架实现了更高的分类精度和优于许多当代和最佳状态 - 艺术OSV型号。 (c)2020 Elsevier B.v.保留所有权利。

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