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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Adaptive skew-sensitive ensembles for face recognition in video surveillance
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Adaptive skew-sensitive ensembles for face recognition in video surveillance

机译:用于视频监控中的人脸识别的自适应偏斜敏感乐团

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Decision support systems for surveillance rely more and more on face recognition (FR) to detect target individuals of interest captured with video cameras. FR is a challenging problem in video surveillance due to variations in capture conditions, to camera interoperability, and to the limited representativeness of target facial models used for matching. Although adaptive classifier ensembles have been applied for robust face matching, it is often assumed that the proportions of faces captured for target and non-target individuals are balanced, known a priori, and do not change over time. Recently, some techniques have been proposed to adapt the fusion function of an ensemble according to class imbalance of the input data stream. For instance, Skew-Sensitive Boolean combination (SSEC) is a active approach that estimates target vs. non-target proportions periodically during operations using Hellinger distance, and adapts its ensemble fusion function to operational class imbalance. Beyond the challenges of estimating class imbalance, such techniques commonly generate diverse pools of classifiers by selecting balanced training data, limiting the potential diversity produced using the abundant non-target data. In this paper, adaptive skew-sensitive ensembles are proposed to combine classifiers trained by selecting data with varying levels of imbalance and complexity, to sustain a high level the performance for video-to-video FR. Faces captured for each person in the scene are tracked and regrouped into trajectories. During enrollment, captures in a reference trajectory are combined with selected non-target captures to generate a pool of 2-class classifiers using data with various levels of imbalance and complexity. During operations, the level of imbalance is periodically estimated from the input trajectories using the HDx quantification method, and pre-computed histogram representations of imbalanced data distributions. This approach allows one to adapt pre-computed histograms and ensemble fusion functions based on the imbalance and complexity of operational data. Finally, the ensemble scores are accumulated of trajectories for robust spatio-temporal recognition. Results on synthetic data show that adapting the fusion function of ensemble trained with different complexities and levels of imbalance can significantly improve performance. Results on the Face in Action video data show that the proposed method can outperform reference techniques (including SSBC and meta-classification) in imbalanced video surveillance environments. Transaction-based analysis shows that performance is consistently higher across operational imbalances. Individual-specific analysis indicates that goat- and lamb-like individuals can benefit the most from adaptation to the operational imbalance. Finally, trajectory-based analysis shows that a video-to-video FR system based on the proposed approach can maintain, and even improve overall system discrimination. (C) 2015 Elsevier Ltd. All rights reserved.
机译:用于监视的决策支持系统越来越依赖于面部识别(FR)来检测由摄像机捕获的目标目标个人。由于捕获条件的变化,相机的互操作性以及用于匹配的目标面部模型的局限性,FR在视频监控中是一个具有挑战性的问题。尽管自适应分类器集成已应用于鲁棒的面部匹配,但通常假定目标和非目标个人捕获的面部比例是平衡的,是先验的,并且不会随时间变化。近来,已经提出了一些技术,以根据输入数据流的类不平衡来调整整体的融合功能。例如,倾斜敏感布尔组合(SSEC)是一种主动方法,可以在使用Hellinger距离的操作过程中定期估算目标与非目标比例,并使其融合功能适应操作等级不平衡。除了估计班级不平衡的挑战之外,此类技术通常通过选择平衡的训练数据来限制使用大量非目标数据产生的潜在多样性,从而生成不同的分类器库。在本文中,提出了自适应偏斜敏感集合,以结合通过选择具有不同级别的不平衡和复杂性的数据而训练的分类器,以维持高水平的视频到视频FR性能。跟踪场景中为每个人捕获的面部,并将其重新组合为轨迹。在注册过程中,参考轨迹中的捕获与选定的非目标捕获相结合,以使用具有各种不平衡和复杂性水平的数据来生成2类分类器池。在操作过程中,使用HDx量化方法从输入轨迹定期估计不平衡程度,并预先计算不平衡数据分布的直方图表示形式。这种方法允许根据操作数据的不平衡和复杂性来调整预计算的直方图和集成融合函数。最后,对轨迹的合计分数进行累积,以实现可靠的时空识别。综合数据的结果表明,适应具有不同复杂性和不平衡水平的集成训练的融合功能可以显着提高性能。在“行动中的脸”视频数据上的结果表明,在不平衡的视频监视环境中,该方法的性能优于参考技术(包括SSBC和元分类)。基于事务的分析表明,在运营不平衡方面,性能始终较高。特定于个体的分析表明,山羊和羔羊状个体可以从适应操作失衡中受益最大。最后,基于轨迹的分析表明,基于所提出方法的视频到视频FR系统可以保持甚至改善整个系统的辨别力。 (C)2015 Elsevier Ltd.保留所有权利。

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