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Partially-supervised learning from facial trajectories for face recognition in video surveillance

机译:在视频监控中从面部轨迹进行部分监督学习以进行面部识别

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Face recognition (FR) is employed in several video surveillance applications to determine if facial regions captured over a network of cameras correspond to a target individuals. To enroll target individuals, it is often costly or unfeasible to capture enough high quality reference facial samples a priori to design representative facial models. Furthermore, changes in capture conditions and physiology contribute to a growing divergence between these models and faces captured during operations. Adaptive biometrics seek to maintain a high level of performance by updating facial models over time using operational data. Adaptive multiple classifier systems (MCSs) have been successfully applied to video-to-video FR, where the face of each target individual is modeled using an ensemble of 2-class classifiers (trained using target vs. non-target samples). In this paper, a new adaptive MCS is proposed for partially-supervised learning of facial models over time based on facial trajectories. During operations, information from a face tracker and individual-specific ensembles is integrated for robust spatio-temporal recognition and for selfupdate of facial models. The tracker defines a facial trajectory for each individual that appears in a video, which leads to the recognition of a target individual if the positive predictions accumulated along a trajectory surpass a detection threshold for an ensemble. When the number of positive ensemble predictions surpasses a higher update threshold, then all target face samples from the trajectory are combined with non-target samples (selected from the cohort and universal models) to update the corresponding facial model. A learn-and-combine strategy is employed to avoid knowledge corruption during selfupdate of ensembles. In addition, a memory management strategy based on Kullback-Leibler divergence is proposed to rank and select the most relevant target and non-target reference samples to be stored in memory as the ensembles evolves. For proof-of-concept, a particular realization of the proposed system was validated with videos from Face in Action dataset. Initially, trajectories captured from enrollment videos are used for supervised learning of ensembles, and then videos from various operational sessions are presented to the system for FR and self-update with high-confidence trajectories. At a transaction level, the proposed approach outperforms baseline systems that do not adapt to new trajectories, and provides comparable performance to ideal systems that adapt to all relevant target trajectories, through supervised learning. Subject-level analysis reveals the existence of individuals for which self-updating ensembles with unlabeled facial trajectories provides a considerable benefit. Trajectory-level analysis indicates that the proposed system allows for robust spatio-temporal video-to-video FR, and may therefore enhance security and situation analysis in video surveillance. (C) 2014 Elsevier B.V. All rights reserved.
机译:面部识别(FR)用于几种视频监视应用程序,以确定通过摄像头网络捕获的面部区域是否对应于目标个人。为了招募目标个人,先验地捕获足够高质量的参考面部样本以设计代表性面部模型通常是昂贵或不可行的。此外,捕获条件和生理的变化导致这些模型与手术期间捕获的面部之间的差异越来越大。自适应生物识别技术试图通过使用操作数据随时间更新面部模型来保持高水平的性能。自适应多重分类器系统(MCS)已成功应用于视频到视频FR,其中,使用2类分类器(使用目标样本与非目标样本进行训练)的集合对每个目标个体的面部进行建模。在本文中,提出了一种新的自适应MCS,用于基于面部轨迹随时间进行部分监督的面部模型学习。在操作过程中,来自面部跟踪器和特定于个人的合奏的信息将集成在一起,以实现可靠的时空识别和面部模型的自我更新。跟踪器为出现在视频中的每个人定义一个面部轨迹,如果沿着轨迹积累的肯定预测超过整体的检测阈值,则可以识别目标个人。当正集合预测的数量超过较高的更新阈值时,则将轨迹中的所有目标面部样本与非目标样本(从同类群组和通用模型中选择)组合在一起,以更新相应的面部模型。采用学习与合并策略以避免在乐团的自我更新过程中知识受损。此外,提出了一种基于Kullback-Leibler散度的内存管理策略,以随着集成的发展对最相关的目标和非目标参考样本进行排序和选择。为了进行概念验证,使用来自Face in Action数据集的视频验证了所提出系统的特定实现。最初,将从注册视频中捕获的轨迹用于监督合奏的学习,然后将来自各个操作会话的视频呈现给系统进行FR,并以高可信度的轨迹进行自我更新。在事务级别,建议的方法优于不适应新轨迹的基准系统,并通过监督学习提供了与适应所有相关目标轨迹的理想系统相当的性能。主题级别的分析揭示了存在个体的情况,这些个体的自我更新合奏具有未标记的面部轨迹可带来可观的收益。轨迹级分析表明,所提出的系统支持鲁棒的时空视频到视频帧中继,因此可以增强视频监视中的安全性和态势分析。 (C)2014 Elsevier B.V.保留所有权利。

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