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Template-based gait authentication through Bayesian thresholding

机译:通过贝叶斯阈值进行基于模板的步态认证

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摘要

While gait recognition is the mapping of a gait sequence to an identity known to the system, gait authentication refers to the problem of identifying whether a given gait sequence belongs to the claimed identity. A typical gait authentication system starts with a feature representation such as a gait template, then proceeds to extract its features, and a transformation is ultimately applied to obtain a discriminant feature set. Almost every authentication approach in literature favours the use of Euclidean distance as a threshold to mark the boundary between a legitimate subject and an impostor. This article proposes a method that uses the posterior probability of a Bayes' classifier in place of the Euclidean distance. The proposed framework is applied to template-based gait feature representations and is evaluated using the standard CASIA-B gait database. Our study experimentally demonstrates that the Bayesian posterior probability performs significantly better than the de facto Euclidean distance approach and the cosine distance which is established in research to be the current state of the art.
机译:步态识别是步态序列到系统已知身份的映射,而步态认证是指识别给定步态序列是否属于要求保护的身份的问题。典型的步态验证系统以步态模板之类的特征表示开始,然后继续提取其特征,并最终应用转换以获得可识别的特征集。文献中几乎所有的认证方法都倾向于使用欧几里得距离作为标记合法主体和冒名顶替者之间边界的阈值。本文提出了一种使用贝叶斯分类器的后验概率代替欧几里得距离的方法。所提出的框架适用于基于模板的步态特征表示,并使用标准CASIA-B步态数据库进行评估。我们的研究实验证明,贝叶斯后验概率的性能明显优于事实上的欧几里德距离方法和研究中确定的余弦距离,这是当前技术水平。

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