Multimodal biometric system combining left and right palmprints

IF 2.1 Q2 INFORMATION SCIENCE & LIBRARY SCIENCE
C. Taouche, H. Belhadef
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引用次数: 1

Abstract

Purpose Palmprint recognition is a very interesting and promising area of research. Much work has already been done in this area, but much more needs to be done to make the systems more efficient. In this paper, a multimodal biometrics system based on fusion of left and right palmprints of a person is proposed to overcome limitations of unimodal systems. Design/methodology/approach Features are extracted using some proposed multi-block local descriptors in addition to MBLBP. Fusion of extracted features is done at feature level by a simple concatenation of feature vectors. Then, feature selection is performed on the resulting global feature vector using evolutionary algorithms such as genetic algorithms and backtracking search algorithm for a comparison purpose. The benefits of such step selecting the relevant features are known in the literature, such as increasing the recognition accuracy and reducing the feature set size, which results in runtime saving. In matching step, Chi-square similarity measure is used. Findings The resulting feature vector length representing a person is compact and the runtime is reduced. Originality/value Intensive experiments were done on the publicly available IITD database. Experimental results show a recognition accuracy of 99.17 which prove the effectiveness and robustness of the proposed multimodal biometrics system than other unimodal and multimodal biometrics systems.
结合左右掌纹的多模式生物识别系统
目的掌纹识别是一个非常有趣和有前景的研究领域。在这方面已经做了很多工作,但要提高系统的效率,还需要做更多的工作。为了克服单峰系统的局限性,本文提出了一种基于人左右掌纹融合的多模式生物识别系统。设计/方法/方法除了MBLBP之外,还使用一些提出的多块局部描述符来提取特征。提取的特征的融合是在特征级别通过特征向量的简单级联来完成的。然后,为了进行比较,使用诸如遗传算法和回溯搜索算法的进化算法对得到的全局特征向量进行特征选择。这种选择相关特征的步骤的好处在文献中是已知的,例如提高识别精度和减小特征集大小,从而节省运行时间。在匹配步骤中,使用卡方相似性度量。Findings表示一个人的结果特征向量长度紧凑,运行时间缩短。原创性/价值在公开的IITD数据库上进行了密集的实验。实验结果显示,识别准确率为99.17,这证明了所提出的多模式生物识别系统与其他单模式和多模式生物特征识别系统相比的有效性和鲁棒性。
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来源期刊
Information Discovery and Delivery
Information Discovery and Delivery INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
5.40
自引率
4.80%
发文量
21
期刊介绍: Information Discovery and Delivery covers information discovery and access for digital information researchers. This includes educators, knowledge professionals in education and cultural organisations, knowledge managers in media, health care and government, as well as librarians. The journal publishes research and practice which explores the digital information supply chain ie transport, flows, tracking, exchange and sharing, including within and between libraries. It is also interested in digital information capture, packaging and storage by ‘collectors’ of all kinds. Information is widely defined, including but not limited to: Records, Documents, Learning objects, Visual and sound files, Data and metadata and , User-generated content.
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