Euler number based feature extraction technique for gender discrimination from offline Hindi signature using SVM & BPNN classifier

Moumita Pal, Swapan Bhattacharyya, Tresata Sarkar
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引用次数: 4

Abstract

Offline Signature is an exceptional feature which makes any human as unique from other persons, and by their own handwritten signature one person can be identified . Gender identification may be considered as one of the key features for human identification. In this paper, gender discrimination has been proposed by feature extraction method . The proposed framework considers handwritten hindi signature of each individuals as an input for gender detection . Afterwards, several features are extracted from those images. The extracted features and their values are stored as data, which is further classified using Support vector Machine(SVM) & Back Propagation Neural Network (BPNN), seeking to improve performance on the task. The proposed system is divided into two parts. In the first part, several features such as roundness, skewness, kurtosis, mean, standard deviation, area, Euler number, distribution density of black pixel, entropy, equi-diameter, connected component (cc) and perimeter were taken as feature. Then obtained features are divided into two categories. In the first category experimental feature set contains Euler number, whereas in the second category the obtained feature set excludes the same. In this proposed work, exploring a range of architectures, and obtaining a large improvement in state-of-the- art performance on the training dataset, the largest publicly available dataset on the task. In the training dataset, we obtained reports an improvement of 4.7% in gender classification system by the inclusion of Euler number as a feature, instead of usig only BPNN classifier.
基于支持向量机和BPNN分类器的基于欧拉数的印地语离线签名性别歧视特征提取技术
离线签名是一种特殊的功能,它使任何人与其他人都是独一无二的,并且通过他们自己的手写签名可以识别一个人。性别认同可以被认为是人类认同的关键特征之一。本文通过特征提取的方法提出了性别歧视。提出的框架将每个人的手写印地语签名作为性别检测的输入。然后,从这些图像中提取一些特征。提取的特征及其值被存储为数据,使用支持向量机(SVM)和反向传播神经网络(BPNN)对数据进行进一步分类,以提高任务的性能。本系统分为两部分。第一部分以圆度、偏度、峰度、均值、标准差、面积、欧拉数、黑像素分布密度、熵、等径、连通分量(cc)、周长等特征作为特征;然后将得到的特征分为两类。在第一类中,实验特征集包含欧拉数,而在第二类中,获得的特征集不包含欧拉数。在这项工作中,探索了一系列的架构,并在训练数据集(该任务上最大的公开可用数据集)上获得了最先进的性能的巨大改进。在训练数据集中,我们获得了包含欧拉数作为特征而不是仅使用BPNN分类器的性别分类系统提高4.7%的报告。
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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