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Novel Technique for 3D Face Recognition Using Anthropometric Methodology

机译:使用人体测量学方法进行3D人脸识别的新技术

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>This manuscript presents an improved system research that can detect and recognize the person in 3D space automatically and without the interaction of the people's faces. This system is based not only on a quantum computation and measurements to extract the vector features in the phase of characterization but also on learning algorithm (using SVM) to classify and recognize the person. This research presents an improved technique for automatic 3D face recognition using anthropometric proportions and measurement to detect and extract the area of interest which is unaffected by facial expression. This approach is able to treat incomplete and noisy images and reject the non-facial areas automatically. Moreover, it can deal with the presence of holes in the meshed and textured 3D image. It is also stable against small translation and rotation of the face. All the experimental tests have been done with two 3D face datasets FRAV 3D and GAVAB. Therefore, the test's results of the proposed approach are promising because they showed that it is competitive comparable to similar approaches in terms of accuracy, robustness, and flexibility. It achieves a high recognition performance rate of 95.35% for faces with neutral and non-neutral expressions for the identification and 98.36% for the authentification with GAVAB and 100% with some gallery of FRAV 3D datasets.
机译:>该手稿提出了一种改进的系统研究,可以自动检测和识别3D空间中的人,而无需人脸的交互。该系统不仅基于量子计算和测量以在表征阶段提取矢量特征,而且还基于学习算法(使用SVM)对人进行分类和识别。这项研究提出了一种改进的技术,该技术可以使用人体测量比例和测量来检测和提取不受面部表情影响的感兴趣区域,从而实现自动3D人脸识别。这种方法能够处理不完整和嘈杂的图像,并自动拒绝非面部区域。而且,它可以处理网格化和纹理化的3D图像中孔的存在。它对于脸部的小平移和旋转也是稳定的。所有实验测试均使用两个3D人脸数据集FRAV 3D和GAVAB完成。因此,提出的方法的测试结果是有希望的,因为它们表明,在准确性,鲁棒性和灵活性方面,它与同类方法相比具有竞争力。对于具有中性和非中性表情的面部,识别率达到95.35%,通过GAVAB进行身份验证的识别率达到98.36%,对于某些FRAV 3D数据集的识别率达到100%。

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