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Offline Signature Verification with VLAD Using Fused KAZE Features from Foreground and Background Signature Images

机译:使用来自前景和背景签名图像的融合Kaze功能的VLAD离线签名验证

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Offline signature verification has been widely accepted as a tool for individual authentication, especially in the field of biometrics and forensics. However, the performance of an automated system under a wide range of writing conditions is still inadequate. The promising approach is to consider recent knowledge about the cognitive processing of visual information of forensic document examiners (FDEs). To implement FDEs' cognitive processing method successfully into offline signature verification, specifically this study proposes a new approach based on vector of locally aggregated descriptors (VLAD) with fused KAZE features detected from foreground and background signature images with a recent fusion strategy. The experimental results by the proposed method with a popular MCYT-75 signature dataset can be summarized as follows: (1) the KAZE features from the background signature images as well as the ones from the foreground images show good performance. (2) The use of fused KAZE features from foreground and background signature images allows us to further improve of the performance. (3) Among the typical fusion methods, the representation-level fusion is a rational choice for fusing the KAZE features to obtain good performance. (4) While the representation-level fusion produces a high-dimensional VLAD vector, the use of principal component analysis for the original VLAD vector can provide a more dimensionally compact vector without significant loss in performance. (5) Finally, the proposed method provides much lower error rates than the existing state-of-the-art offline signature verification methods.
机译:离线签名验证被广泛接受为个人认证的工具,尤其是在生物识别和取证领域。然而,在广泛的写入条件下自动化系统的性能仍然不足。有希望的方法是考虑最近关于法医文献审查员(FDES)的视觉信息的认知处理的知识。为了将FDES的认知处理方法成功地进入离线签名验证,具体地提出了一种基于局部聚合描述符(VLAD)的向量的新方法,其具有从前景和背景签名图像检测到的融合Kaze特征,以及最近的融合策略。具有流行MCYT-75签名数据集的提出方法的实验结果可以概括如下:(1)来自背景签名图像的Kaze特征以及来自前景图像的特征显示出良好的性能。 (2)使用来自前景的融合Kaze特征和背景签名图像使我们能够进一步提高性能。 (3)在典型的融合方法中,表示级融合是融合Kaze特征以获得良好性能的理性选择。 (4)虽然表示级融合产生高维VLAD向量,但原始VLAD载体的主要成分分析可以提供更尺寸紧凑的载体,而无需显着损失。 (5)最后,所提出的方法提供比现有最先进的离线签名验证方法更低的误差率。

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