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Incremental update of biometric models in face-based video surveillance

机译:基于面部的视频监控中生物识别模型的增量更新

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Video-based face recognition of individuals involves matching facial regions captured in video sequences against the model of individuals enrolled to a face recognition system. Due to a limited control over operational conditions, classification systems applied to face matching are confronted with complex pattern recognition environments that change over time. Therefore, the facial model of an individual tends to diverge from the underlying data distribution. Although a limited amount of reference data is often collected during initial enrollment, new samples often become available over time to update and refine models. In this paper, an adaptive ensemble of classifiers is proposed to update facial models in response to new reference samples. To avoid knowledge corruption linked to incremental learning of monolithic classifiers, and maintain a high level of performance, this ensemble exploits a learn-and-combine approach. In response to new reference samples, a new 2-class Probabilistic Fuzzy ARTMAP classifier is trained and combined to previously-trained classifiers in the ROC space. Iterative Boolean Combination is employed for fusion of 2-class classifiers of each individual in the decision space. Performance is assessed in terms of AUC accuracy and resource requirements under different incremental learning scenarios with new data extracted from the Faces in Action data set. Simulation results indicate that the proposed system significantly outperforms reference classifiers and ensembles for incremental learning.
机译:基于视频的面部识别涉及将视频序列中捕获的面部区域与注册到面部识别系统的个人模型匹配。由于对操作条件的控制有限,应用于面部匹配的分类系统面对随时间变化的复杂模式识别环境。因此,个人的面部模型往往偏离底层数据分布。虽然在初始注册期间经常收集有限量的参考数据,但新的样本通常会随着时间的推移而变得可用,以更新和改进模型。在本文中,提出了一种分类器的自适应整合,以响应于新参考样本来更新面部模型。为了避免知识腐败与单片分类器的增量学习相关联,并保持高水平的性能,这集合利用了学习和结合的方法。响应于新的参考样本,培训新的2级概率模糊ARTMAP分类器并将其组合到ROC空间中的先前培训的分类器。迭代布尔组合用于融合决策空间中每个个人的2级分类器。在不同增量学习场景下的AUC准确性和资源要求方面评估性能,其中从Action数据集中从面部提取的新数据。仿真结果表明,所提出的系统显着优于增量学习的参考分类器和合奏。

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