A statistical approach for offline signature verification using local gradient features

A. B. M. Ashikur Rahman, Golam Mostaeen, Md. Hasanul Kabir
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引用次数: 3

Abstract

Signature is widely used as a means of personal verification which emphasizes the need for a signature verification system. Often the single signature feature may produce unacceptable error rates. Features used in this method are mainly local key-point feature that deals with the orientation around each key-point. Before extracting the features, preprocessing of a scanned image is necessary to isolate the region of interest part of a signature and to remove any spurious noise present. The system is initially trained using a database of signatures obtained from those individuals whose signatures are to be authenticated by the system. For extracting the feature, key-points of the image are detected. For each point, orientation around the point is calculated as the feature. By matching the features of sample signature and testing signature decision is taken. If a query signature is in the acceptance range then it is an authentic signature, otherwise it is a forged signature.
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一种基于局部梯度特征的离线签名验证统计方法
签名作为一种个人验证手段被广泛使用,这就强调了签名验证系统的必要性。通常,单个签名特性可能产生不可接受的错误率。该方法中使用的特征主要是处理每个关键点周围方向的局部关键点特征。在提取特征之前,必须对扫描图像进行预处理,以隔离签名的感兴趣部分区域并去除存在的任何杂散噪声。系统最初使用从那些签名将由系统验证的个人那里获得的签名数据库进行训练。提取特征时,检测图像的关键点。对于每个点,计算该点周围的方向作为特征。通过对样本签名特征的匹配和测试,做出签名决策。查询签名在接受范围内的为真实签名,否则为伪造签名。
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