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Sequential Sample Consensus: A Robust Algorithm for Video-Based Face Recognition

机译:顺序样本共识:一种基于视频的人脸识别的鲁棒算法

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This paper presents a novel video-based face recognition algorithm by using a sequential sampling and updating scheme, named sequential sample consensus. The proposed algorithm aims at providing a sequential scheme that can be applied to streaming video data. Different from existing approaches, the training video sequences serve as the sample space, and the person’s identity in the testing sequence is characterized using an identity probability mass function (PMF) that is sequentially updated. For each testing frame, samples are randomly drawn from the sample space, and the numbers of samples for each identity are determined by the identity PMF. The testing frame is evaluated against the drawn samples to calculate the weights, and the sample weights are used for updating the identity PMF. Benefiting from the sampling procedure, the change in both the numbers and the weights of the samples for each individual leads to quick reaction of the algorithm. The proposed algorithm is robust against misclassification caused by pose variations, and sensitive to identity switching during recognition. The algorithm is evaluated using both public and self-made datasets, and shows better performance than other video-based face recognition approaches.
机译:本文提出了一种新的基于视频的人脸识别算法,该算法采用了顺序采样和更新方案,称为顺序样本共识。提出的算法旨在提供一种可应用于流视频数据的顺序方案。与现有方法不同,训练视频序列用作样本空间,而测试序列中的人的身份使用顺序更新的身份概率质量函数(PMF)进行表征。对于每个测试帧,从样本空间中随机抽取样本,每个身份的样本数由身份PMF确定。针对抽取的样本评估测试框架以计算权重,样本权重用于更新身份PMF。受益于采样程序,每个个体的样品数量和重量的变化都会导致算法快速反应。所提出的算法对于由姿势变化引起的错误分类是鲁棒的,并且对识别期间的身份切换敏感。该算法使用公共数据集和自制数据集进行评估,并且比其他基于视频的面部识别方法表现出更好的性能。

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