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Biometric Recognition Using Feature Selection and Combination

机译:使用特征选择和组合的生物特征识别

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摘要

Most of the prior work in biometric literature has only emphasized on the issue of feature extraction and classification. However, the critical issue of examining the usefulness of extracted biometric features has been largely ignored. Feature evaluation/selection helps to identify and remove much of the irrelevant and redundant features. The small dimension of feature set reduces the hypothesis space, which is critical for the success of online implementation in personal recognition. This paper focuses on the issue of feature subset selection and its effectiveness in a typical bimodal biometric system. The feature level fusion has not received adequate attention in the literature and therefore the performance improvement in feature level fusion using feature subset selection is also investigated. Our experimental results demonstrate that while majority of biometric features are useful in predicting the subjects identity, only a small subset of these features are necessary in practice for building an accurate model for identification. The comparison and combination of features extracted from hand images is evaluated on the diverse classification schemes; naive Bayes (normal, estimated, multinomial), decision trees (C4.5, LMT), k-NN, SVM, and FFN.
机译:生物统计学文献中的大多数先前工作仅强调特征提取和分类的问题。但是,检查提取的生物特征的有用性的关键问题已被大大忽略。功能评估/选择有助于识别和删除许多不相关和多余的功能。特征集的小尺寸减小了假设空间,这对于在线实现个人识别成功至关重要。本文着重于特征子集选择及其在典型双峰生物识别系统中的有效性问题。在文献中,特征级融合没有得到足够的重视,因此也研究了使用特征子集选择进行特征级融合的性能提高。我们的实验结果表明,虽然大多数生物特征可用于预测受试者身份,但实际上,这些特征的一小部分对于构建准确的识别模型是必需的。从手部图像中提取的特征的比较和组合在各种分类方案上进行了评估;朴素贝叶斯(标准,估计,多项式),决策树(C4.5,LMT),k-NN,SVM和FFN。

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