首页> 外文期刊>International Journal of Computer Vision >Towards 3D Face Recognition in the Real: A Registration-Free Approach Using Fine-Grained Matching of 3D Keypoint Descriptors
【24h】

Towards 3D Face Recognition in the Real: A Registration-Free Approach Using Fine-Grained Matching of 3D Keypoint Descriptors

机译:迈向真实的3D人脸识别:使用3D关键点描述符的精细匹配的免注册方法

获取原文
获取原文并翻译 | 示例
       

摘要

Registration algorithms performed on point clouds or range images of face scans have been successfully used for automatic 3D face recognition under expression variations, but have rarely been investigated to solve pose changes and occlusions mainly since that the basic landmarks to initialize coarse alignment are not always available. Recently, local feature-based SIFT-like matching proves competent to handle all such variations without registration. In this paper, towards 3D face recognition for real-life biometric applications, we significantly extend the SIFT-like matching framework to mesh data and propose a novel approach using fine-grained matching of 3D keypoint descriptors. First, two principal curvature-based 3D keypoint detectors are provided, which can repeatedly identify complementary locations on a face scan where local curvatures are high. Then, a robust 3D local coordinate system is built at each keypoint, which allows extraction of pose-invariant features. Three keypoint descriptors, corresponding to three surface differential quantities, are designed, and their feature-level fusion is employed to comprehensively describe local shapes of detected keypoints. Finally, we propose a multi-task sparse representation based fine-grained matching algorithm, which accounts for the average reconstruction error of probe face descriptors sparsely represented by a large dictionary of gallery descriptors in identification. Our approach is evaluated on the Bosphorus database and achieves rank-one recognition rates of 96.56, 98.82, 91.14, and 99.21 % on the entire database, and the expression, pose, and occlusion subsets, respectively. To the best of our knowledge, these are the best results reported so far on this database. Additionally, good generalization ability is also exhibited by the experiments on the FRGC v2.0 database.
机译:在面部表情的点云或范围图像上执行的配准算法已成功用于表情变化下的自动3D面部识别,但很少进行研究以解决姿势变化和遮挡的问题,这主要是因为初始化粗略对齐的基本界标并不总是可用的。最近,基于局部特征的类似于SIFT的匹配证明无需注册即可处理所有此类变化。在本文中,针对现实生活中的生物特征识别应用的3D人脸识别,我们将类似于SIFT的匹配框架扩展到网格数据,并提出了一种使用3D关键点描述符的细粒度匹配的新颖方法。首先,提供了两个基于曲率的主要3D关键点检测器,它们可以重复地识别人脸扫描中局部曲率高的互补位置。然后,在每个关键点构建一个健壮的3D局部坐标系,从而可以提取姿势不变特征。设计了与三个表面微分量相对应的三个关键点描述符,并使用它们的特征级融合来全面描述检测到的关键点的局部形状。最后,我们提出了一种基于多任务稀疏表示的细粒度匹配算法,该算法解决了在识别中由大型画廊描述符字典稀疏表示的探针面部描述符的平均重构误差。我们的方法在Bosphorus数据库上进行了评估,在整个数据库以及表情,姿势和遮挡子集上,均达到96.56%,98.82、91.14和99.21%的排名第一。据我们所知,这些是迄今为止在该数据库上报告的最佳结果。此外,FRGC v2.0数据库上的实验还显示出良好的泛化能力。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号