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Identification of degraded fingerprints using PCA- and ICA-based features

机译:使用基于PCA和ICA的特征识别降级的指纹

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Many algorithms have been developed for fingerprint identification. The main challenge in many of the applications remains in the identification of degraded images in which the fingerprints are smudged or incomplete. Fingerprints from the FVC2000 databases have been utilized in this project to develop and implement feature extraction and classification algorithms. Besides the degraded images in the database, artificially degraded images have also been used. In this paper we use features based on PCA (principal component analysis) and ICA (independent component analysis) to identify fingerprints. PCA and ICA reduce the dimensionality of the input image data. PCA- and ICA-based features do not contain redundancies in the data. Different multilayer neural network architectures have been implemented as classifiers. The performance of different features and networks is presented in this paper.
机译:已经开发了许多算法用于指纹识别。许多应用中的主要挑战仍然存在于识别下降的图像,其中指纹是污迹或不完整的。该项目中已使用来自FVC2000数据库的指纹,以开发和实现特征提取和分类算法。除了数据库中的降级图像之外,还使用人工降级的图像。在本文中,我们使用基于PCA(主成分分析)和ICA(独立分量分析)的特征来识别指纹。 PCA和ICA降低输入图像数据的维度。基于PCA和ICA的功能不包含数据中的冗余。不同的多层神经网络架构已经实现为分类器。本文提出了不同特征和网络的性能。

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