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K-nearest neighbor classifier for signature verification system

机译:用于签名验证系统的K近邻分类器

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The paper presents an off-line signature verification system using k-nearest neighbor classifier. Global features from the signatures are extracted using radon transform. For each registered user in the system database a number of reference signatures are enrolled and aligned for statistics information extraction about his signature. Extreme points warping algorithm is used to align two signatures. During the k-nearest neighbor classifier training, a number of genuine and forged signatures are chosen. A test signature's verification is established by first aligning it with each reference signature for the claimed user. The signature is then classified as genuine or forgery, according to the alignment scores which are normalized by reference statistics, using standard pattern classification techniques. Using a database of 2250 signatures (genuine signatures and skilled forgeries) from 75 writers in the proposed signature verification system a performance of approximately 80% is achieved.
机译:本文提出了一种使用k最近邻分类器的离线签名验证系统。使用radon变换从签名中提取全局特征。对于系统数据库中的每个注册用户,都会注册并对齐多个参考签名,以提取有关其签名的统计信息。极端变形算法用于对齐两个签名。在k近邻分类器训练中,选择了许多真实的和伪造的签名。首先将测试签名与要求保护的用户的每个参考签名对齐,即可建立测试签名的验证。然后,根据对齐分数,使用标准模式分类技术根据参考统计数据对对齐分数进行归类,将签名分类为真品或伪造品。在建议的签名验证系统中,使用来自75位作者的2250个签名(原始签名和伪造品)的数据库,可以实现大约80%的性能。

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