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Application of Wave Atoms Decomposition and Extreme Learning Machine for Fingerprint Classification

机译:波原子分解与极限学习机在指纹分类中的应用

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Law enforcement, border security and forensic applications are some of the areas where fingerprint classification plays an important role. A new technique based on wave atoms decomposition and bidirectional two-dimensional principal component analysis (B2DPCA) using extreme learning machine (ELM) for fast and accurate fingerprint image classification is proposed. The foremost contribution of this paper is application of two dimensional wave atoms decomposition on original fingerprint images to obtain sparse and efficient coefficients. Secondly, distinctive feature sets are extracted through dimensionality reduction using B2DPCA. ELM eliminates limitations of classical training paradigm; trains data at a considerably faster speed due to its simplified structure and efficient processing. Our algorithm combines optimization of B2DPCA and the speed of ELM to obtain a superior and efficient algorithm for fingerprint classification. Experimental results on twelve distinct fingerprint datasets validate the superiority of our proposed method.
机译:执法,边境安全和司法鉴定是指纹分类中起重要作用的一些领域。提出了一种基于波原子分解和双向二维主成分分析(B2DPCA),使用极限学习机(ELM)进行指纹图像快速,准确分类的新技术。本文的主要贡献是将二维波原子分解应用于原始指纹图像以获得稀疏有效系数。其次,使用B2DPCA通过降维提取独特的特征集。 ELM消除了经典训练范式的局限性;由于其简化的结构和有效的处理,可以以相当快的速度训练数据。我们的算法结合了B2DPCA的优化和ELM的速度,从而获得了一种出色且高效的指纹分类算法。在十二个不同的指纹数据集上的实验结果证明了我们提出的方法的优越性。

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