Signature verification using Directional and Textural features

K. Pushpalatha, A. K. Gautam, K. Raviteja, P. Shruthi, R. Acharya, P. Yuvaraj
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引用次数: 2

Abstract

Biometric identification technique like offline signature verification and recognition is now a day considered as one of the important personal identification method used to identify the individual. Feature extraction is the best technique which preserves the essential information of the input image. In this paper we propose offline signature verification based on Transform domain feature such as gradient, coherence and dominant local orientation. The acquired image is resized to bring all the signatures into a uniform size. The images are thinned using morphological process. The DWT technique is applied on signature images to get LL, LH, HL and HH subbands. The directional information feature is computed from the subbands. The directional features and textural features are concatenated to form the feature vector. The Feed Forward ANN tool in MATLAB is used for classification and verification. The results of False Rejection Rate (FAR), False Acceptance Rate (FAR) and Total Success Rate (TSR) are obtained for GPDS-960 database. A total of 360 images are used for training and testing. It is observed that the values of FRR, FAR and TSR are improved compared to the existing algorithms.
使用方向和纹理特征的签名验证
生物特征识别技术,如离线签名验证和识别,目前被认为是一种重要的个人身份识别方法,用于识别个人。特征提取是保留输入图像基本信息的最好方法。本文提出了一种基于梯度、相干性和局部优势取向等变换域特征的离线签名验证方法。将获取的图像调整大小,以使所有签名具有统一的大小。利用形态学方法对图像进行薄化处理。将DWT技术应用于签名图像,得到LL、LH、HL和HH子带。从子带计算方向信息特征。将方向特征和纹理特征连接起来形成特征向量。利用MATLAB中的前馈人工神经网络工具进行分类和验证。在GPDS-960数据库中得到了误拒率(FAR)、误接受率(FAR)和总成功率(TSR)的结果。总共360张图片用于训练和测试。结果表明,与现有算法相比,该算法的FRR、FAR和TSR值均有提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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