Automatic 3D face verification from range data

Gang Pan, Zhaohui Wu, Yunhe Pan
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引用次数: 78

Abstract

In this paper, we presented a novel approach for automatic 3D face verification from range data. The method consists of range data registration and comparison. There are two steps in registration procedure: the coarse step conducting the normalization by exploiting a priori knowledge of the human face and facial features, and the fine step aligning the input data with the model stored in the database by the partial directed Hausdorff distance. To speed up the registration, a simplified version of the model is generated for each model in the model database. During the face comparison, the partial Hausdorff distance is employed as the similarity metric. The experiments are carried out on a database with 30 individuals and the best EER of 3.24% is achieved.
根据距离数据自动进行3D人脸验证
本文提出了一种基于距离数据的三维人脸自动验证方法。该方法由距离数据配准和比较两部分组成。配准过程分为两步:粗步利用人脸和面部特征的先验知识进行归一化,细步利用部分有向Hausdorff距离将输入数据与数据库中存储的模型对齐。为了加快注册速度,为模型数据库中的每个模型生成模型的简化版本。在人脸比较中,采用部分豪斯多夫距离作为相似性度量。在30个个体的数据库上进行了实验,获得了3.24%的最佳识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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