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Generating frontal view face image for pose invariant face recognition

机译:生成用于姿势不变的人脸识别的正面人脸图像

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Recognizing human faces is one of the most important areas of research in biometrics. However, drastic change of facial poses is a big challenge for its practical application. This paper proposes generating frontal view face image using linear transformation in feature space for face recognition. We extract features from a posed face image using the kernel PCA. Then, we transform the posed face image into its corresponding frontal face image using the transformation matrix predetermined by learning. Then, the generated frontal face image is identified by three different discrimination methods such as LDA, NDA, or GDA. Experimental results show that the recognition rate with the pose transformation outperforms that without pose transformation greatly.
机译:识别人脸是生物识别研究中最重要的领域之一。然而,面部姿势的急剧变化对于其实际应用是很大的挑战。本文提出在特征空间中使用线性变换生成正面人脸图像以进行人脸识别。我们使用内核PCA从姿势的面部图像中提取特征。然后,我们使用通过学习预先确定的转换矩阵,将姿势的面部图像转换为其对应的正面面部图像。然后,通过三种不同的判别方法(例如LDA,NDA或GDA)来识别生成的正面图像。实验结果表明,具有姿势变换的识别率大大优于没有姿势变换的识别率。

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