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Fully automatic face detection and facial feature points extraction using local Gabor filter bank and PCA

机译:使用本地Gabor滤波器组和PCA进行全自动面部检测和面部特征点提取

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Detecting facial feature points in images is a crucial stage for facial action interpretation tasks. This paper proposes a facial feature points extraction system based on local Gabor filter bank and principal component analysis (PCA). Usually, a Gabor filter bank is formed by 5 frequencies and 8 orientations. In this case, a lot of time is consumed while many information is useless. In this paper, we only apply 3 frequencies and 4 orientations to form a local Gabor filter bank and employ the PCA method to reduce the dimension further. Experimental results show that the local Gabor filter bank formed by 12 Gabor filters also performs very well in feature points extraction so that the efficiency of the system can be improved.
机译:检测图像中的面部特征点是面部动作解释任务的关键阶段。本文提出了一种基于局部Gabor滤波器组和主成分分析(PCA)的人脸特征点提取系统。通常,Gabor滤波器组由5个频率和8个方向组成。在这种情况下,会浪费大量时间,而许多信息却毫无用处。在本文中,我们仅应用3个频率和4个方向来形成局部Gabor滤波器组,并采用PCA方法进一步减小尺寸。实验结果表明,由12个Gabor滤波器组成的局部Gabor滤波器组在特征点提取中也表现出色,从而可以提高系统的效率。

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