KAZE features via fisher vector encoding for offline signature verification

Manabu Okawa
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引用次数: 11

Abstract

The widespread use of handwritten signatures for identity authentication has resulted in a need for automated verification systems. However, there is still significant room for improvement in the performance of these automated systems when compared with the performance of human analysts, particularly forensic document examiners, under a wide range of conditions. Furthermore, even with recent techniques, obtaining as much information as possible from a limited number of samples still remains challenging. In this study, to tackle these challenges and to boost the discriminative power of offline signature verification, a new method using KAZE features based on the recent Fisher vector (FV) encoding is proposed. The adoption of a probabilistic visual vocabulary and higher-order statistics, both of which can encode detailed information about the distribution of KAZE features, provides us with a more precise spatial distribution of the characteristics for a writer. The experimental results on the public MCYT-75 dataset can be summarized as follows: 1) The proposed method improves performance compared to the recent vector of locally aggregated descriptors (VLAD)-based approach. 2) The use of principal component analysis (PCA)for the original FV can provide a more dimensionally compact vector without a significant loss in performance. 3) The proposed method provides much lower error rates than existing state-of-the-art offline signature verification systems when applied to the MCYT-75 dataset.
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KAZE的特点是通过fisher矢量编码进行离线签名验证
由于广泛使用手写签名进行身份验证,因此需要自动验证系统。然而,与人类分析人员,特别是法医文件审查员在各种条件下的表现相比,这些自动化系统的性能仍有很大的改进空间。此外,即使使用最新的技术,从有限的样本中获得尽可能多的信息仍然是一个挑战。为了解决这些问题,提高离线签名验证的判别能力,本文提出了一种基于Fisher向量(FV)编码的KAZE特征的离线签名验证方法。采用概率视觉词汇和高阶统计,这两者都可以编码关于KAZE特征分布的详细信息,为我们提供了一个作家特征的更精确的空间分布。在MCYT-75公共数据集上的实验结果表明:1)与基于局部聚合描述子向量(vector of local aggregated descriptors, VLAD)的方法相比,本文提出的方法提高了性能。2)对原始FV使用主成分分析(PCA)可以在不显著损失性能的情况下提供更紧凑的维度向量。3)与现有最先进的离线签名验证系统相比,该方法在MCYT-75数据集上的错误率要低得多。
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