基于摄像机网络的多姿态人脸识别

M. Bäuml, Keni Bernardin, Mika Fischer, H. K. Ekenel, R. Stiefelhagen
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引用次数: 64

摘要

在本文中,我们研究了在现实监控场景中使用分布式摄像机网络使用面部外观特征来重新识别人员。与通常用于重新识别人的特征(如全身外观)相比,面部特征具有在更长的时间间隔内保持稳定的优势。在这种应用程序中使用人脸的挑战,除了低捕获的人脸分辨率,是他们的外观在相机的视线很大程度上受到照明和观看姿势的影响。在这里,提出了一些解决这些问题的技术,并在监视型记录的数据库上进行了评估。提出了一种在线捕获和交互式检索系统,该系统允许在视频数据库中搜索特定人物的目击事件。评估结果由4台摄像机在数天内记录的监测数据呈现。仅使用单个轨迹作为查询集的相机间检索平均平均精度为0.60,经过操作员的相关反馈后,平均精度可达0.86。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-pose Face Recognition for Person Retrieval in Camera Networks
In this paper, we study the use of facial appearancefeatures for the re-identification of persons using distributedcamera networks in a realistic surveillance scenario.In contrast to features commonly used for person reidentification,such as whole body appearance, facial featuresoffer the advantage of remaining stable over muchlarger intervals of time. The challenge in using faces forsuch applications, apart from low captured face resolutions,is that their appearance across camera sightings is largelyinfluenced by lighting and viewing pose. Here, a numberof techniques to address these problems are presented andevaluated on a database of surveillance-type recordings. Asystem for online capture and interactive retrieval is presentedthat allows to search for sightings of particular personsin the video database. Evaluation results are presentedon surveillance data recorded with four cameras over severaldays. A mean average precision of 0.60 was achievedfor inter-camera retrieval using just a single track as queryset, and up to 0.86 after relevance feedback by an operator.
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