Feature selection for novel fingerprint dynamics biometric technique based on PCA

Ishan Bhardwaj, N. Londhe, S. Kopparapu
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引用次数: 6

Abstract

Fingerprint dynamics is a recently introduced behavioral biometric technique based on the time derived parameters from multi instance finger scan actions. Various related features can be extracted from recorded time stamps. However, not all of them contribute in improvement of classification accuracy and may result in high dimensionality of the data. High dimensionality leads to higher computation cost for calculating the features, and low classification rate. Thus it is crucial to select the best features for efficient system performance. Principal Component Analysis (PCA) is a popular technique for dimensionality reduction and has been applied to a wide number of applications. However conventional PCA based methods have a disadvantage of using all the features for transforming to lower dimensional space. In this paper, we follow a method based on PCA, which selects the most dominating features subset out of the feature pool at hand, without transforming the original features. The performance of selected features is assessed using various classification paradigms. The result ascertain successful selection of dominant feature subsets of fingerprint dynamics using PCA.
基于PCA的新型指纹动态生物识别技术特征选择
指纹动态是一种基于多实例指纹扫描动作时间衍生参数的行为生物识别技术。可以从记录的时间戳中提取各种相关特征。然而,并不是所有的方法都有助于提高分类精度,并且可能导致数据的高维。高维数导致特征计算成本高,分类率低。因此,为有效的系统性能选择最佳特性是至关重要的。主成分分析(PCA)是一种流行的降维技术,已被广泛应用于许多领域。然而,传统的基于主成分分析的方法有一个缺点,即使用所有的特征来转换到低维空间。在本文中,我们采用了一种基于PCA的方法,在不变换原始特征的情况下,从手头的特征池中选择最主要的特征子集。所选特征的性能使用各种分类范式进行评估。结果表明,利用主成分分析法成功地选择了指纹动力学的优势特征子集。
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