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Automatic Video Based Face Verification and Recognition by Support Vector Machines

机译:支持向量机基于视频的自动人脸验证与识别

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This paper presents an automatic video based face verification and recognition system by Support Vector Machines (SVMs). Faces as training samples are automatically extracted from input video sequences in real-time by LUT-based Adaboost and are normalized both in geometry and in gray level distribution after facial landmark localization via Simple Direct Appearance Model (SDAM). Two different strategies for multi-class face verification and recognition problems with SVMs, "one-vs-all" and "one-vs-another", are discussed and compared in details. Experiment results over 100 clients are reported to demonstrate the effectiveness of SVM on video sequences.
机译:本文提出了一种基于支持向量机(SVM)的基于视频的自动面部验证和识别系统。通过基于LUT的Adaboost实时自动从输入视频序列中提取作为训练样本的脸部,并在通过简单直接外观模型(SDAM)定位了脸部界标后对几何形状和灰度分布进行标准化。讨论并比较了两种支持SVM的多类人脸验证和识别问题的不同策略。据报道,超过100个客户端的实验结果证明了SVM在视频序列上的有效性。

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