离线手写签名验证的图嵌入

Michael Stauffer, Paul Maergner, Andreas Fischer, Kaspar Riesen
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引用次数: 3

摘要

由于其高可用性和适用性,手写签名在我们的生活中是一种重要的生物识别认证手段。为了降低潜在的误用风险,自动签名验证尝试区分真实签名和伪造签名。大多数可用的签名验证方法都使用手写的矢量表示,而不是基于图形的表示。这是相当令人惊讶的,因为图形提供了一些固有的优势。例如,图形能够直接调整其大小和结构以适应各自手写实体的大小和复杂性。此外,最近提出了几种快速图匹配算法,这些算法允许在具有大量数据的领域中使用图。本文提出将不同的图嵌入方法与最近的基于图的签名验证框架结合使用。即签名图之间不直接匹配,而是先与一组预定义的原型图进行比较,从而得到不相似度表示。在实验评估中,我们将所提出的方法应用于两个广泛使用的基准数据集。在这两个数据集上,我们通过经验证实,无学习图嵌入在准确性和运行时间方面都优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph Embedding for Offline Handwritten Signature Verification
Due to the high availability and applicability, handwritten signatures are an eminent biometric authentication measure in our life. To mitigate the risk of a potential misuse, automatic signature verification tries to distinguish between genuine and forged signatures. Most of the available signature verification approaches make use of vectorial rather than graph-based representations of the handwriting. This is rather surprising as graphs offer some inherent advantages. Graphs are, for instance, able to directly adapt their size and structure to the size and complexity of the respective handwritten entities. Moreover, several fast graph matching algorithms have been proposed recently that allow to employ graphs also in domains with large amounts of data. The present paper proposes to use different graph embedding approaches in conjunction with a recent graph-based signature verification framework. That is, signature graphs are not directly matched with each other, but first compared with a set of predefined prototype graphs, in order to obtain a dissimilarity representation. In an experimental evaluation, we employ the proposed method on two widely used benchmark datasets. On both datasets, we empirically confirm that the learning-free graph embedding outperforms state-of-the-art methods with respect to both accuracy and runtime.
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