网格结构形态图谱离线签名验证

B H Shekar, R. Bharathi, J. Kittler, Y. Vizilter, Leonid Mestestskiy
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引用次数: 17

摘要

本文提出了一种基于网格结构形态模式谱的离线签名验证方法。该方法分为预处理、特征提取和验证三个主要阶段。在特征提取阶段,将特征图像划分为8个大小相等的垂直网格,获得每个网格的网格结构形态模式谱。网格结构的形态谱以10 bin直方图的形式表示,并进行归一化以克服缩放问题。将8个垂直形态谱基于归一化直方图串联得到80维特征向量。为了验证目的,我们考虑了两种众所周知的分类器,即SVM和MLP,并在标准签名数据集CEDAR、GPDS-160和区域语言(卡纳达语)数据集MUKOS上进行了实验。通过比较研究,还提供了一些已知的方法来展示所提出方法的性能。
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Grid structured morphological pattern spectrum for off-line signature verification
In this paper, we present a grid structured morphological pattern spectrum based approach for off-line signature verification. The proposed approach has three major phases: preprocessing, feature extraction and verification. In the feature extraction phase, the signature image is partitioned into eight equally sized vertical grids and grid structured morphological pattern spectra for each grid is obtained. The grid structured morphological spectrum is represented in the form of 10-bin histogram and normalised to overcome the problem of scaling. The eighty dimensional feature vector is obtained by concatenating all the eight vertical morphological spectrum based normalised histogram. For verification purpose, we have considered two well known classifiers, namely SVM and MLP and conducted experiments on standard signature datasets namely CEDAR, GPDS-160 and MUKOS, a regional language (Kannada) dataset. The comparative study is also provided with the well known approaches to exhibit the performance of the proposed approach.
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