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Performance Evaluation of Iris Based Recognition System Implementing PCA and ICA Encoding Techniques

机译:基于PCA和ICA编码技术的虹膜识别系统的性能评估。

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In this paper, we describe and analyze the performance of two iris-encoding techniques. The first technique is based on Principle Component Analysis (PCA) encoding method while the second technique is a combination of Principal Component Analysis with Independent Component Analysis (ICA) following it. Both techniques are applied globally. PCA and ICA are two well known methods used to process a variety of data. Though PCA has been used as a preprocessing step that reduces dimensions for obtaining ICA components for iris, it has never been analyzed in depth as an individual encoding method. In practice PCA and ICA are known as methods that extract global and fine features, respectively. It is shown here that when PCA and ICA methods are used to encode iris images, one of the critical steps required to achieve a good performance is compensation for rotation effect. We further study the effect of varying the image resolution level on the performance of the two encoding methods. The major motivation for this study is the cases in practice where images of the same or different irises taken at different distances have to be compared. The performance of encoding techniques is analyzed using the CASIA dataset. The original images are non-ideal and thus require a sequence of preprocessing steps prior to application of encoding methods. We plot a series of Receiver Operating Characteristics (ROCs) to demonstrate various effects on the performance of the iris-based recognition system implementing PCA and ICA encoding techniques.
机译:在本文中,我们描述和分析了两种虹膜编码技术的性能。第一种技术基于主成分分析(PCA)编码方法,而第二种技术则是将主成分分析与独立成分分析(ICA)相结合。两种技术都在全球范围内应用。 PCA和ICA是用于处理各种数据的两种众所周知的方法。尽管PCA已被用作减少获得虹膜ICA分量的尺寸的预处理步骤,但从未将其作为单独的编码方法进行深入分析。在实践中,PCA和ICA被称为分别提取全局特征和精细特征的方法。此处显示,当使用PCA和ICA方法对虹膜图像进行编码时,实现良好性能所需的关键步骤之一是旋转效果的补偿。我们进一步研究了改变图像分辨率级别对两种编码方法性能的影响。这项研究的主要动机是在实践中必须比较在不同距离拍摄的相同或不同虹膜的图像的情况。使用CASIA数据集分析编码技术的性能。原始图像不理想,因此在应用编码方法之前需要一系列预处理步骤。我们绘制了一系列的接收器工作特性(ROC),以展示对基于虹膜的识别系统的性能(实施PCA和ICA编码技术)的各种影响。

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