Gender Classification from Fingerprint Using Hybrid CNN-SVM

Vidhya Keren T, Serin J, Mary Ivy Deepa I S, V.Ebenezer, A.Jenefa
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Abstract

Gender classification is used in numerous applications such as biometrics, criminology, surveillance, HCI, and business profiling. Although biometric factors like gait, face, hand shape, and iris have been used to classify people into genders, the majority of research has focused on facial traits due to their more recognisable qualities. This research employs fingerprints to classify gender, with the intention of being relevant for future studies. Several methods for gender classification utilising fingerprints have been presented in the literature, including ANN, KNN, Naive Bayes, the Gaussian mixture model, and deep learning-based classifiers. Although these classifiers have shown good classification accuracy, gender classification remains an unexplored field of study that necessitates the development of new approaches to enhance recognition accuracy, computation, and running time. In this paper, a CNN-SVM hybrid framework for gender classification from fingerprints is proposed, where preprocessing, feature extraction, and classification are the three main components. The main goal of this study is to use CNN to extract fingerprint information. These features are then sent to an SVM classifier to determine gender. The hybrid model's performance measures are examined and compared to those of the conventional CNN model. Using a CNN-SVM hybrid model, the accuracy of gender classification based on fingerprints was 99.25%.
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基于CNN-SVM的指纹性别分类
性别分类用于许多应用,如生物识别、犯罪学、监控、HCI和商业分析。尽管步态、面部、手形和虹膜等生物特征因素已被用于将人分为性别,但由于面部特征更容易识别,大多数研究都集中在面部特征上。这项研究利用指纹对性别进行分类,旨在为未来的研究提供参考。文献中已经提出了几种利用指纹进行性别分类的方法,包括ANN、KNN、Naive Bayes、高斯混合模型和基于深度学习的分类器。尽管这些分类器已经显示出良好的分类准确性,但性别分类仍然是一个未经探索的研究领域,需要开发新的方法来提高识别准确性、计算和运行时间。本文提出了一种用于指纹性别分类的CNN-SVM混合框架,其中预处理、特征提取和分类是三个主要组成部分。本研究的主要目的是利用CNN提取指纹信息。然后将这些特征发送到SVM分类器以确定性别。对混合模型的性能指标进行了检验,并与传统的CNN模型进行了比较。使用CNN-SVM混合模型,基于指纹的性别分类的准确率为99.25%。
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