使用视频进行人识别的生理和行为方法

F. Matta, J. Dugelay
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引用次数: 4

摘要

在这篇文章中,我们提出了两种生理和行为的方法来识别使用视频的人。第一个系统称为多模态识别系统,分为两个模块。第一个模块利用行为信息:它基于使用头部位移信号计算的统计特征;第二种方法是处理生理信息:它是经典特征脸方法的概率扩展。为了实现一致的融合,两个系统共享相同的概率分类框架:高斯混合模型(GMM)近似和贝叶斯分类器。第二个系统称为tomoface识别系统,它应用离散视频断层扫描来计算时空特征,这些特征将序列的头部和面部动态总结为单个图像(称为“视频x射线图像”);这些新特征随后被特征面方法的扩展版本分析。最后,我们评估了这两个系统的性能,并将它们与基于面部外观的传统识别方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Physiological and behavioural approaches for person recognition using videos
In this article we present two physiological and behavioural approaches for person recognition using videos. The first system, called the multimodal recognition system, is divided in two modules. The first module exploits the behavioural information: it is based on statistical features computed using the displacement signals of the head; the second one is dealing with the physiological information: it is a probabilistic extension of the classic Eigenface approach. For a consistent fusion, both systems share the same probabilistic classification framework: a Gaussian Mixture Model (GMM) approximation and a Bayesian classifier. The second system, called the tomoface recognition system, applies discrete video tomography to compute spatiotemporal features that summarise the head and facial dynamics of a sequence into a single image (called "video X-ray image"); these novel features are subsequently analysed by an extended version of the eigenface approach. Finally, we assess the performances of both systems, and we compare them with a traditional recognition approach based on facial appearance.
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