自动姿态不变人脸识别中人脸特征的动态加权

Eslam A. Mostafa, A. Farag
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引用次数: 12

摘要

提出了一种自动姿态不变人脸识别系统。在我们的方法中,我们考虑面部特征周围的纹理信息来计算探针和画廊图像之间的相似性度量。基于每个面部特征对捕获图像姿态的鲁棒性,动态估计其权重。提出了一种用于初始化主动形状模型的9个面部特征的提取方法。该方法不仅依赖于面部特征周围的纹理,而且结合了面部特征关系的信息。我们的人脸识别系统在姿态评估、CMU-PIE和FERET等常用数据集上进行了测试。结果表明,该方法优于目前最先进的自动人脸识别系统。
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Dynamic Weighting of Facial Features for Automatic Pose-Invariant Face Recognition
This paper proposes an automatic pose-invariant face recognition system. In our approach, we consider the texture information around the facial features to compute the similarity measure between the probe and gallery images. The weight of each facial feature is dynamically estimated based on its robustness to the pose of the captured image. An approach to extract the 9 facial features used to initialize the Active shape model is proposed. The approach is not dependent on the texture around the facial feature only but incorporates the information obtained about the facial feature relations. Our face recognition system is tested on common datasets in pose evaluation CMU-PIE and FERET. The results show out-performance of the state of the art automatic face recognition systems.
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