基于指纹模式分析的性别检测系统

Faluyi Bamidele Ibitayo, Olowojebutu Akinyemi Olanrewaju, Makinde Bukola Oyeladun
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引用次数: 0

摘要

人类有独特的特征,可以用来区分他们,从而作为一种身份。生物计量学通过测量个人解剖学或生理学的某些方面来识别人,例如手的几何形状或指纹,指纹由交错的脊和谷的图案组成。本研究的目的是分析人类指纹纹理以确定其性别,以及RTVTR和Ridge Count在性别检测中的相关性。这项研究是为了分析生理生物特征(拇指指纹)在确定人类性别方面的有效性。人类有独特的特征,可以用来区分他们,从而作为一种身份。生物计量学通过测量个人解剖学或生理学的某些方面来识别人,例如手的几何形状或指纹,指纹由交错的脊和谷的图案组成。本工作开发了一个使用SVM+CNN(用于性别分类)训练的指纹分析来确定人类性别的系统。为了利用指纹模式分析建立准确的基于指纹的性别检测系统模型,必须采取以下步骤:数据采集(在进行研究时,第一步是以一组指纹图像的形式采集数据),预处理数据(在输入训练数据之前,进行预处理数据,即调整指纹图像的大小为96x96像素)。训练数据(在此处理中,数据集将使用卷积神经网络和支持向量机方法进行训练。这个训练数据处理是对CNN + SVM进行训练的阶段,从所进行的分类中获得较高的准确率)。结果验证(在完成以上所有流程后,本阶段我们将在制作的应用程序中显示基于指纹图像的性别预测结果)。SOCOFing数据库由600名非洲人的6000张指纹图像组成。它包含独特的属性,如性别标签,手和手指的名字,以及合成改变的版本,有三种不同级别的改变,即抹掉,中心旋转和z形切割。在阈值为0.25时,CNN分类器的准确率为96%,灵敏度为97.8%,精密度为96.92%。在阈值0.45时,分别为96.3%、97.6%和97.6%。阈值为0.75时,分别为96.5%、97.3%和97.9%。对于SVM分类器,在阈值0.25处分别为94.3%、96.6%和95.8%。在阈值0.45时,分别为94.5%、96.4%和96.2%。阈值为0.75时,分别为94.8%、97.3%和96.8%。从分类的600个指纹中,发现男性指纹总数为450个,女性指纹总数为150个。通过多个阈值比较两种分类器的性别准确性、灵敏度和精密度。但是,需要验证的是,得到的结果表明,CNN分类的准确率、灵敏度和精度都优于SVM。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A FINGERPRINT BASED GENDER DETECTOR SYSTEM USING FINGERPRINT PATTERN ANALYSIS
Humans have distinctive and unique traits which can be used to distinguish them thus, acting as a form of identification. Biometrics identifies people by measuring some aspect of individual’s anatomy or physiology such as hand geometry or fingerprint which consists of a pattern of interleaved ridges and valleys. The aim of this research is to analyse humans fingerprint texture in order to determine their gender, and correlation of RTVTR and Ridge Count on gender detection. The study is to analyze the effectiveness of physical biometrics (thumbprint) in order to determine gender in humans. Humans have distinctive and unique traits which can be used to distinguish them thus, acting as a form of identification. Biometrics identify people by measuring some aspect of individual’s anatomy or physiology such as hand geometry or fingerprint which consists of a pattern of interleaved ridges and valleys. This work developed a system that determines human gender using fingerprint analysis trained with SVM+CNN (for gender classification). To build an accurate fingerprint based model for gender detection system using fingerprint pattern analysis, there are certain steps that must be taken, which include; Data collection (in conducting research, the first step is collecting data in the form of a set of fingerprint image), Pre-processing Data (before entering the training data, pre-processing data is performed, which is resize the fingerprint image 96x96 pixels). Training Data (in this processing the dataset will be trained using the Convolutional neural network and Support vector machine methodology. This training data processing is a stage where CNN + SVM are trained to obtained high accuracy from the classification conducted). Result Verification (after doing all the above process, at this stage, we will display the results of gender prediction based on fingerprint images in the application that has been making). SOCOFing database is made up of 6,000 fingerprint images from 600 African subjects. It contains unique attributes such as labels for gender, hand and finger name as well as synthetically altered versions with three different levels of alteration for obliteration, central rotation, and z-cut. The values for accuracy, sensitivity and precision using the CNN classifier at threshold 0.25 were 96%, 97.8% and 96.92% respectively. At threshold 0.45 the values were 96.3%, 97.6% and 97.6% respectively. At threshold 0.75 the values were 96.5%, 97.3% and 97.9% respectively. In case of the SVM classifier, at threshold 0.25 were 94.3%, 96.6% and 95.8% respectively. At threshold 0.45 the values were 94.5%, 96.4% and 96.2% respectively. At threshold 0.75 the values were 94.8%, 97.3% and 96.8% respectively. From the 600 fingerprints classified, it was observed that a total of 450 fingerprints were detected for male and 150 for female. Results were obtained for gender accuracy, sensitivity and precision through several thresholds to compare the two classifiers. However, it should be verified that the results obtained showed that the CNN classification yielded better accuracy, sensitivity and precision than SVM.
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