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An efficient novel approach for iris recognition based on stylometric features and machine learning techniques

机译:一种基于样式特征和机器学习技术的虹膜识别的有效新颖方法

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This paper presents a novel iris recognition system based on machine learning methods. The motivation behind this research resides in the interrelatedness of biometric systems and stylometry, as shown in our previous research. The main goal of the proposed model is to reach virtually perfect classification accuracy, eliminate false acceptance rates, and cancel the possibility of recreating an iris image from a generated template. To achieve this, we omit Gabor wavelets and other filter banks typically employed in iris recognition systems based on the pioneering work of John Daugman. Instead, we employ machine learning methods that classify biometric templates as numeric features. The biometric templates are generated by converting a normalized iris image into a one-dimensional set of fixed-length codes, which then undergoes stylometric feature extraction. The extracted features are further used for classification. A new recognition method is developed using the CASIA iris database, and its generalizability is demonstrated on the MMU and IITD iris databases separately, and also on their unification with the CASIA database, by applying oversampling before and during the cross-validation procedure. The experimental evaluation shows that the system performs as intended. In addition, the computational costs are significantly decreased with respect to traditional systems, which in turn reduces the overall complexity of the recognition system, making it suitable for use in practical applications.
机译:本文提出了一种基于机器学习方法的新型虹膜识别系统。如我们先前的研究所示,这项研究的动机在于生物识别系统和样式的相互关系。提出的模型的主要目标是达到几乎完美的分类精度,消除错误的接受率,并消除从生成的模板重新创建虹膜图像的可能性。为此,我们根据John Daugman的开创性工作,省略了通常用于虹膜识别系统中的Gabor小波和其他滤波器组。相反,我们采用机器学习方法将生物识别模板分类为数字特征。通过将归一化的虹膜图像转换为一维固定长度代码集,然后进行样式特征提取,可以生成生物特征模板。提取的特征进一步用于分类。使用CASIA虹膜数据库开发了一种新的识别方法,并通过在交叉验证过程之前和期间进行过采样,分别在MMU和IITD虹膜数据库上以及在与CASIA数据库统一上证明了其可推广性。实验评估表明该系统按预期运行。另外,相对于传统系统,计算成本显着降低,这又降低了识别系统的整体复杂性,使其适合于实际应用。

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