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Machine learning approaches for person identification and verification

机译:用于人员识别和验证的机器学习方法

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摘要

New machine learning strategies are proposed for person identification which can be used in several biometric modalities such as friction ridges, handwriting, signatures and speech. The biometric or forensic performance task answers the question of whether or not a sample belongs to a known person. Two different learning paradigms are discussed: person-independent (or general learning) and person-dependent (or person-specific learning). In the first paradigm, learning is from a general population of ensemble of pairs, each of which is labelled as being from the same person or from different persons- the learning process determines the range of variations for given persons and between different persons. In the second paradigm the identity of a person is learnt when presented with multiple known samples of that person- where the variation and similarities within a particular person are learnt. The person-specific learning strategy is seen to perform better than general learning (5% higher perfor-mace with signatures). Improvement of person-specific performance with increasing number of samples is also observed.
机译:提出了一种新的机器学习策略来识别人,该策​​略可用于多种生物特征识别方式,例如摩擦脊,手写,签名和语音。生物测定或取证执行任务回答了样品是否属于已知人员的问题。讨论了两种不同的学习范式:独立于人的(或一般学习)和独立于人的(或特定于人的学习)。在第一个范例中,学习是从一般的成对总体中进行的,每个整体都被标记为来自同一个人或不同个人—学习过程确定了给定个人和不同个人之间的变化范围。在第二范式中,当一个人的多个已知样本出现时,就可以识别该人的身份,从而了解特定人的变异和相似性。特定于人的学习策略被认为比一般学习表现更好(带有签名的性能提高了5%)。还观察到随着样本数量的增加,特定于个人的性能得到改善。

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