一种基于深度卷积神经网络特征的离线签名验证方法

Victor L. F. Souza, Adriano Oliveira, R. Sabourin
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引用次数: 41

摘要

与之前最先进的方法相比,使用深度卷积神经网络(CNN)和依赖于作者(WD)的SVM分类器提取的特征,显著提高了手写签名验证(HSV)的性能。在这项工作中,研究是否使用这些CNN特征提供良好的结果在一个作者独立(WI) HSV上下文中,基于二分类变换结合使用SVM的作者独立分类器。在巴西和GPDS数据集上进行的实验表明:(i)本文方法优于文献中的其他WI-HSV方法;(ii)在全局阈值场景下,本文方法能够优于巴西数据集中具有CNN特征的作者依赖方法;(iii)在用户阈值场景下,本文方法与具有CNN特征的作者依赖方法获得的结果相似。
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A Writer-Independent Approach for Offline Signature Verification using Deep Convolutional Neural Networks Features
The use of features extracted using a deep convolutional neural network (CNN) combined with a writer-dependent (WD) SVM classifier resulted in significant improvement in performance of handwritten signature verification (HSV) when compared to the previous state-of-the-art methods. In this work it is investigated whether the use of these CNN features provide good results in a writer-independent (WI) HSV context, based on the dichotomy transformation combined with the use of an SVM writer-independent classifier. The experiments performed in the Brazilian and GPDS datasets show that (i) the proposed approach outperformed other WI-HSV methods from the literature, (ii) in the global threshold scenario, the proposed approach was able to outperform the writer-dependent method with CNN features in the Brazilian dataset, (iii) in an user threshold scenario, the results are similar to those obtained by the writer-dependent method with CNN features.
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