Can the Surveillance System Run Pose Variant Face Recognition in Real Time?

Hung-Son Le, Haibo Li
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引用次数: 4

Abstract

This paper presents an approach for face recognition across pose variations when only one sample image per person is available. From a near frontal face sample image, virtual views at different off-frontal angles were generated and used for the system training task. The manual work and computation burden, thus, are put on the offline training process, that makes it possible to build a real-time face recognition surveillance system. Our work exploited the inherent advantages of "single" HMM scheme, which is based on an ID discrete hidden Markov model (ID-DHMM) and is designed to avoid the need of retraining the system whenever it is provided new image(s). Experiment results on the CMU PIE face database demonstrate that the proposed scheme improves significantly the recognition performance
监控系统能否实时进行姿态变异人脸识别?
本文提出了一种在每个人只有一张样本图像时,跨姿态变化的人脸识别方法。从近正面人脸样本图像中,生成不同正面角度的虚拟视图,并用于系统训练任务。从而将人工劳动和计算负担转移到离线训练过程中,使构建实时人脸识别监控系统成为可能。我们的工作利用了“单一”HMM方案的固有优势,该方案基于ID离散隐马尔可夫模型(ID- dhmm),旨在避免在提供新图像时对系统进行再训练的需要。在CMU PIE人脸数据库上的实验结果表明,该方法显著提高了人脸识别性能
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