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Face Recognition at a Distance: Scenario Analysis and Applications

机译:远距离人脸识别:场景分析与应用

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摘要

Face recognition is the most popular biometric used in applications at a distance, which range from high security scenarios such as border control to others such as video games. This is a very challenging task since there are many varying factors (illumination, pose, expression, etc.) This paper reports an experimental analysis of three acquisition scenarios for face recognition at a distance, namely: close, medium, and far distance between camera and query face, the three of them considering templates enrolled in controlled conditions. These three representative scenarios are studied using data from the NIST Multiple Biometric Grand Challenge, as the first step in order to understand the main variability factors that affect face recognition at a distance based on realistic yet workable and widely available data. The scenario analysis is conducted quantitatively in two ways. First, an analysis of the information content in segmented faces in the different scenarios. Second, an analysis of the performance across scenarios of three matchers, one commercial, and two other standard approaches using popular features (PCA and DCT) and matchers (SVM and GMM). The results show to what extent the acquisition setup impacts on the verification performance of face recognition at a distance.
机译:面部识别是远距离应用中使用最广泛的生物识别技术,其范围从安全性高的方案(例如边界控制)到其他游戏(例如视频游戏)。这是一项非常具有挑战性的任务,因为有许多不同的因素(照明,姿势,表情等)。本文报告了三种针对远距离面部识别的采集场景的实验分析,即:相机之间的近距离,中距离和远距离和查询人脸,这三个人考虑了在受控条件下注册的模板。第一步,使用NIST多重生物特征识别技术大挑战的数据进行研究,以了解基于现实且可行且广泛可用的数据,了解影响远距离面部识别的主要可变性因素。情景分析通过两种方式进行定量分析。首先,分析不同场景下分割面部的信息内容。其次,使用流行的功能(PCA和DCT)和匹配器(SVM和GMM)对三个匹配器,一个商业广告和另外两个标准方法的场景下的性能进行分析。结果表明,远距离采集设置在多大程度上影响面部识别的验证性能。

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  • 来源
  • 会议地点 Valencia(ES);Valencia(ES)
  • 作者单位

    ATVS, Escuela Politecnica Superior - Universidad Autonoma de Madrid,Avda. Francisco Tomas y Valiente, 11 - 28049 Madrid, Spain;

    ATVS, Escuela Politecnica Superior - Universidad Autonoma de Madrid,Avda. Francisco Tomas y Valiente, 11 - 28049 Madrid, Spain;

    ATVS, Escuela Politecnica Superior - Universidad Autonoma de Madrid,Avda. Francisco Tomas y Valiente, 11 - 28049 Madrid, Spain;

    ATVS, Escuela Politecnica Superior - Universidad Autonoma de Madrid,Avda. Francisco Tomas y Valiente, 11 - 28049 Madrid, Spain;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 人工智能理论;
  • 关键词

  • 入库时间 2022-08-26 14:05:29

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