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Genetic Evolutionary Biometrics: Hybrid feature selection and weighting for a multi-modal biometric system

机译:遗传和进化生物特征:多模式生物特征系统的混合特征选择和加权

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The Genetic & Evolutionary Computation (GEC) research community is seeing the emergence of a new and exciting subarea, referred to as Genetic & Evolutionary Biometrics (GEB), as GECs are increasingly being applied to a variety of biometric problems. In this paper, we present successful GEB techniques for multi-biometric fusion and multi-biometric feature selection and weighting. The first technique, known as GEF (Genetic & Evolutionary Fusion), seeks to optimize weights for score-level fusion. The second technique is known as GEFeWSML (Genetic & Evolutionary Feature Weighting and Selection-Machine Learning). The goal of GEFeWSML is to evolve feature masks (FMs) that achieve high recognition accuracy, use a low percentage of features, and generalize well to unseen subjects. GEFeWSML differs from the other GEB techniques for feature selection and weighting in that it incorporates cross validation in an effort to evolve FMs that generalize well to unseen subjects.
机译:遗传与进化计算(GEC)研究界正在看到一个新的令人兴奋的分区,即遗传与进化生物特征(GEB),这是因为GEC越来越多地应用于各种生物特征问题。在本文中,我们介绍了成功的GEB技术,用于多生物特征融合以及多生物特征选择和加权。第一项技术被称为GEF(遗传与进化融合),旨在优化分数级别融合的权重。第二种技术称为GEFeWSML(遗传和进化特征加权和选择机器学习)。 GEFeWSML的目标是发展功能蒙版(FM),以实现高识别精度,使用低百分比的功能并很好地推广到看不见的主题。 GEFeWSML与其他GEB技术在特征选择和权重方面的不同之处在于,它结合了交叉验证,以努力开发出可以很好地推广到看不见的主题的FM。

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