Artificial Intelligence & Data Analytics Lab CCIS, Prince Sultan University, Riyadh, Saudi Arabia.
Department of Computer Engineering, Asharfi Isfahani University, Isfahan, Iran.
Microsc Res Tech. 2021 Nov;84(11):2666-2676. doi: 10.1002/jemt.23816. Epub 2021 May 14.
Soft biometric information, such as gender, iris, and voice, can be helpful in various applications, such as security, authentication, and validation. Iris is secure biometrics with low forgery and error rates due to its highly certain features are being used in the last few decades. Iris recognition could be used both independently and in part for secure recognition and authentication systems. Existing iris-based gender classification techniques have low accuracy rates as well as high computational complexity. Accordingly, this paper presents an authentication approach through gender classification from iris images using support vector machine (SVM) that has an excellent response to sustained changes using the Zernike, Legendre invariant moments, and Gradient-oriented histogram. In this study, invariant moments are used as feature extraction from iris images. After extracting these descriptors' attributes, the attributes are categorized through keycode fusion. SVM is employed for gender classification using a fused feature vector. The proposed approach is evaluated on the CVBL data set and results are compared in state of the art based on local binary patterns and Gabor filters. The proposed approach came out with 98% gender classification rate with low computational complexity that could be used as an authentication measure.
软生物识别信息,如性别、虹膜和语音,在各种应用中都很有用,如安全、认证和验证。虹膜是一种安全的生物识别技术,由于其具有高度确定性的特征,伪造和错误率都很低,因此在过去几十年中得到了广泛应用。虹膜识别可单独使用,也可部分用于安全识别和认证系统。现有的基于虹膜的性别分类技术的准确率较低,计算复杂度较高。因此,本文提出了一种利用支持向量机(SVM)从虹膜图像进行性别分类的认证方法,该方法对使用 Zernike、Legendre 不变矩和梯度方向直方图的持续变化具有出色的响应能力。在这项研究中,不变矩被用作从虹膜图像中提取特征。提取这些描述符的属性后,通过关键码融合对属性进行分类。使用融合特征向量的 SVM 进行性别分类。该方法在 CVBL 数据集上进行了评估,并与基于局部二值模式和 Gabor 滤波器的最新技术进行了比较。所提出的方法具有 98%的性别分类率和较低的计算复杂度,可作为一种认证手段。