School of Computer Science, University of Petroleum and Energy Studies, Dehradun 248007, India.
Department of Computer Science, College of Computer, Qassim University, Buraydah 51452, Saudi Arabia.
Sensors (Basel). 2022 May 10;22(10):3620. doi: 10.3390/s22103620.
Biometrics is the term for measuring human characteristics. If the term is divided into two parts, bio means life, and metric means measurement. The measurement of humans through different computational methods is performed to authorize a person. This measurement can be performed via a single biometric or by using a combination of different biometric traits. The combination of multiple biometrics is termed biometric fusion. It provides a reliable and secure authentication of a person at a higher accuracy. It has been introduced in the UIDIA framework in India (AADHAR: Association for Development and Health Action in Rural) and in different nations to figure out which biometric characteristics are suitable enough to authenticate the human identity. Fusion in biometric frameworks, especially FKP (finger-knuckle print) and iris, demonstrated to be a solid multimodal as a secure framework. The proposed approach demonstrates a proficient and strong multimodal biometric framework that utilizes FKP and iris as biometric modalities for authentication, utilizing scale-invariant feature transform (SIFT) and speeded up robust features (SURF). Log Gabor wavelet is utilized to extricate the iris feature set. From the extracted region, features are computed using principal component analysis (PCA). Both biometric modalities, FKP and iris, are combined at the match score level. The matching is performed using a neuro-fuzzy neural network classifier. The execution and accuracy of the proposed framework are tested on the open database Poly-U, CASIA, and an accuracy of 99.68% is achieved. The accuracy is higher compared to a single biometric. The neuro-fuzzy approach is also tested in comparison to other classifiers, and the accuracy is 98%. Therefore, the fusion mechanism implemented using a neuro-fuzzy classifier provides the best accuracy compared to other classifiers. The framework is implemented in MATLAB 7.10.
生物识别技术是指测量人类特征的术语。如果将该术语分为两部分,bio 表示生命,metric 表示测量。通过不同的计算方法对人类进行测量,以授权一个人。可以通过单一生物识别特征或使用不同生物识别特征的组合来执行此测量。多个生物识别特征的组合称为生物识别融合。它以更高的准确性提供了对个人的可靠和安全的身份验证。它已在印度的 UIDIA 框架(AADHAR:农村发展与健康行动协会)和不同国家中引入,以确定哪种生物识别特征足够适合验证人类身份。生物识别框架中的融合,特别是指指纹和虹膜,已被证明是一种可靠的多模态安全框架。所提出的方法展示了一种高效且强大的多模态生物识别框架,该框架使用指纹和虹膜作为生物识别模态进行身份验证,利用尺度不变特征变换(SIFT)和加速稳健特征(SURF)。对数 Gabor 小波用于提取虹膜特征集。从提取的区域中,使用主成分分析(PCA)计算特征。在匹配分数级别上组合两种生物识别模态,指纹和虹膜。使用神经模糊神经网络分类器进行匹配。在 Poly-U、CASIA 等开放数据库上测试了所提出框架的执行和准确性,达到了 99.68%的准确率。与单一生物识别相比,准确率更高。还将神经模糊方法与其他分类器进行了比较测试,准确率为 98%。因此,与其他分类器相比,使用神经模糊分类器实现的融合机制提供了最佳的准确性。该框架在 MATLAB 7.10 中实现。