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Pose-invariant face recognition based on matching the occlusion free regions aligned by 3D generic model

机译:基于匹配3D通用模型对齐的闭塞式自由区域的姿势不变的人脸识别

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摘要

Face recognition systems perform accurately in a controlled environment, but an unconstrained environment dramatically degrades their performance. In this study, a novel pose-invariant face recognition system is proposed based on the occlusion free regions. This method utilises a gallery set of frontal face images and can handle large pose variations. For a 2D probe face image with an arbitrary pose, the head pose is first obtained using a robust head pose estimation method. Then, this 2D face image is normalised by a novel 3D modelling method from a single input image. In consequence, pose invariant face recognition is converted to a frontal face recognition problem. The 3D structure is reconstructed using a new method based on the estimated head pose and only one facial feature point, which is significantly reduced in comparison with the number of landmarks used in previous methods. According to the estimated poses, occlusion free regions are extracted from normalised images as feature extraction. Finally, face matching and recognition is performed using these regions from normalised test images and the corresponding regions of gallery images. Experimental results on FERET and CAS-PEAL-R1 databases demonstrate that the proposed method outperforms other methods, and it is robust and efficient.
机译:面部识别系统在受控环境中准确地执行,但不受约束的环境显着降低了它们的性能。在该研究中,基于闭塞区域提出了一种新型姿势不变性面部识别系统。该方法利用了一组正面脸部图像,可以处理大的姿势变化。对于具有任意姿势的2D探针面部图像,首先使用鲁棒头姿势估计方法获得头部姿势。然后,该2D面部图像由来自单个输入图像的新颖3D建模方法标准化。结果,构成不变性面部识别被转换为正面识别问题。使用基于估计的头部姿势的新方法来重建3D结构,并且只有一个面部特征点,与先前方法中使用的地标数相比,显着减少。根据估计的姿势,从标准化图像中提取闭塞式自由区域作为特征提取。最后,使用来自归一化测试图像的这些区域和画廊图像的相应区域来执行面部匹配和识别。 FIRET和CAS-PEAL-R1数据库上的实验结果表明,所提出的方法优于其他方法,它具有稳健和高效。

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