离线孟加拉语签名验证:实证研究

S. Pal, Alireza Alaei, U. Pal, M. Blumenstein
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引用次数: 3

摘要

在所有的生物特征认证系统中,手写签名被认为是最合法和社会接受的个人验证属性。本文的目的是为理解涉及离线孟加拉语(孟加拉语)签名的基于阈值的签名验证技术提供经验贡献。涉及非英语签名的签名验证实验是签名验证领域的一个重要研究内容。在非英语签名验证领域,使用印度文字签名的研究作品很少。为了填补这一空白,提出了一种考虑离线孟加拉语签名的基于阈值的验证方案。采用欠采样位图、交叉点/端点和方向链码等技术进行特征提取。采用最近邻法进行分类。此外,还建立了一个孟加拉国签名数据库,其中包括2400个真实签名(100×24)和3000个伪造签名(100×30),并用于实验。我们得到了15.57%的平均错误率(AER)作为本研究中使用的方向链码特征的最佳验证结果。
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Off-line Bangla signature verification: An empirical study
Among all of the biometric authentication systems, handwritten signatures are considered as the most legally and socially accepted attributes for personal verification. The objective of this paper is to present an empirical contribution towards the understanding of a threshold-based signature verification technique involving off-line Bangla (Bengali) signatures. Experiments on signature verification involving non-English signatures are an important consideration in the signature verification area. Only very few research works employing signatures of Indian script have been considered in the field of non-English signature verification. To fill this gap, a threshold-based scheme for verification considering off-line Bangla signatures is proposed. Some techniques such as under-sampled bitmap, intersection/endpoint and directional chain code are employed for feature extraction. The Nearest Neighbour method is considered for classification. Furthermore, a Bangla signature database, which consists of 2400 (100×24) genuine signatures and 3000 (100×30) forgeries has been created and is employed for experimentation. We obtained a 15.57% Average Error Rate (AER) as the best verification result using directional chain code features employed in this research work.
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