一种高效的引力搜索决策森林方法用于指纹识别

Mahesh Kumar, Devender Kumar
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引用次数: 1

摘要

基于指纹的人体识别由于指纹印痕的持久性和唯一性,是一种真实的生物特征识别系统。指纹识别广泛应用于个性化电子设备、安全系统、银行、法医实验室,尤其是执法机构。现有的指纹识别系统虽然能够识别指纹,但存在质量差、指纹潜在等问题。执法机关在犯罪现场采集潜在指纹,以查找罪犯。因此,开发一种既能有效识别完整指纹又能有效识别潜在指纹的新系统至关重要。本文提出了一种高效的引力搜索决策森林(GSDF)方法,该方法将引力搜索算法(GSA)与随机森林(RF)方法相结合。在本文提出的GSDF方法中,GSA的质量代理根据随机森林假设,通过构造决策树来确定解。由于大量智能体可以使用随机比例规则创建多个假设,因此指纹识别由大量智能体以假设空间集最终生成决策森林的形式完成。分别对潜在指纹(NIST SD27数据集)和完整指纹(FVC2004数据集)进行了指纹识别实验。通过评估机器学习分类器(随机森林、决策树、反向传播神经网络和k近邻)的结果,分析了所提出的GSDF方法的有效性。对所提方法和合并的机器学习分类器的比较分析表明,所提方法的性能优于所提方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Gravitational Search Decision Forest Approach for Fingerprint Recognition
Fingerprint based human identification is one of the authentic biometric recognition systems due to the permanence and uniqueness of the finger impressions. There is the extensive usage of fingerprint recognition in personalized electronic devices, security systems, banking, forensic labs, and especially in law enforcement agencies. Although the existing systems can recognize fingerprints, they lack in case of poor quality and latent fingerprints. The latent fingerprints are captured by law enforcement agencies during the crime scene to find the criminal. Consequently, it is essential to develop a novel system that can efficiently recognize both complete and latent fingerprints. The current work proposes an efficient Gravitational Search Decision Forest (GSDF) method, which is a combination of the gravitational search algorithm (GSA) and the random forest (RF) method. In the proposed GSDF approach, the mass agent of GSA determines the solution by constructing decision trees in accordance with the random forest hypothesis. The recognition of the fingerprints is accomplished by mass agents in the form of a final generated decision forest from the set of hypothesis space as the mass agents can create multiple hypotheses using random proportional rules. The experiments for fingerprint recognition are conducted for both the latent fingerprints (NIST SD27 dataset) and the complete fingerprints (FVC2004 dataset). The effectiveness of the proposed GSDF approach is analyzed by evaluating the results with machine learning classifiers (random forest, decision tree, back propagation neural networks, and k-nearest neighbor) as well. The comparative analysis of the proposed approach and incorporated machine learning classifiers indicates the outperformed performance of the proposed approach.
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来源期刊
Kuwait Journal of Science & Engineering
Kuwait Journal of Science & Engineering MULTIDISCIPLINARY SCIENCES-
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