Target-based evaluation of face recognition technology for video surveillance applications

D. Gorodnichy, Eric Granger
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引用次数: 8

Abstract

This paper concerns the problem of real-time watch-list screening (WLS) using face recognition (FR) technology. The risk of flagging innocent travellers can be very high when deploying a FR system for WLS since: (i) faces captured in surveillance video vary considerably due to pose, expression, illumination, and camera inter-operability; (ii) reference images of targets in a watch-list are typically of limited quality or quantity; (iii) the performance of FR systems may vary significantly from one individual to another (according to socalled “biometric menagerie” phenomenon); (iv) the number of travellers drastically exceeds the number of target people in a watch-list; and finally and most critically, (v) due to the nature of optics, images of faces captured by video-surveillance cameras are focused and sharp only over a very short period of time if ever at all. Existing evaluation frameworks were originally developed for spatial face identification from still images, and do not allow one to properly examine the suitability of the FR technology for WLS with respect to the above listed risk factors intrinsically present in any video surveillance application. This paper introduces the target-based multi-level FR performance evaluation framework that is suitable for WLS. According to the framework, Level 0 (face detection analysis) deals with the system's ability to process low resolution faces. Level 1 (transaction-based analysis) deals with the ability to match faces in open-set problems, where target vs. non-target distributions are unbalanced. Level 2 (subject-based analysis) deals with robustness of the system to different types of target individuals. Finally, Level 3 (spatio-temporal analysis) allows one to examine the overall FR system discrimination by means of accumulating the recognition decision confidence over a face track, which can be used for developing more robust intelligent decision-making schemes including face triaging.The results from testing a commercial state-of-art COTS FR product on a public video data-set are shown to illustrate the benefits of this framework.
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基于目标的人脸识别技术在视频监控中的应用
研究了基于人脸识别技术的实时监视名单筛选问题。在为WLS部署FR系统时,标记无辜旅客的风险可能非常高,因为:(i)由于姿势、表情、照明和摄像头的互操作性,监控视频中捕获的人脸差异很大;(ii)观察名单上目标的参考图像通常质量或数量有限;(iii)人脸识别系统的性能可能因人而异(根据所谓的“生物识别动物园”现象);(iv)旅行者人数大大超过观察名单上的目标人数;最后也是最关键的一点是,(5)由于光学的特性,视频监控摄像机捕捉到的人脸图像只能在很短的时间内聚焦和清晰,如果有的话。现有的评估框架最初是为从静止图像中进行空间人脸识别而开发的,并且不允许人们根据任何视频监控应用中固有的上述风险因素,正确检查FR技术对WLS的适用性。本文介绍了一种适用于WLS的基于目标的多级FR性能评价框架。根据该框架,Level 0(人脸检测分析)处理系统处理低分辨率人脸的能力。第1级(基于事务的分析)处理在开放集问题中匹配面孔的能力,其中目标与非目标分布是不平衡的。层次2(基于主体的分析)处理系统对不同类型目标个体的鲁棒性。最后,第3级(时空分析)允许人们通过积累人脸轨迹上的识别决策置信度来检查整个人脸识别系统的歧视,这可以用于开发更强大的智能决策方案,包括人脸分类。在公共视频数据集上测试商业最先进的COTS FR产品的结果显示了该框架的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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