基于三维点云数据的人脸识别能力评价

Rafiul Amin, A. Shams, S. Rahman, D. Hatzinakos
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引用次数: 3

摘要

人脸区域特征选择是提高基于二维图像的人脸识别系统性能的一种众所周知的方法。在三维模态中,基于区域的特征选择方法是一种比较新的人脸识别方法。在此背景下,本文提出了一种评估三维人脸表面不同区域的识别能力的方法,以用于人脸识别系统。本文提出利用三维点云数据(PCD),将单位法向量在人脸表面的加权平均作为人脸区域识别的特征。采用迭代最近点算法对人脸点云分割区域进行配准。引入了一种基于法线之间角距离的度量来表示同一面部区域的两个表面之间的相似性。最后,建立基于类内相关的识别分数,找出识别面部表面PCD患者时重要的关键面部区域,如眼睛、鼻子和嘴巴。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of discrimination power of facial parts from 3D point cloud data
Feature selection from facial regions is a well-known approach to increase the performance of 2D image-based face recognition systems. In case of 3D modality, the approach of region-based feature selection for face recognition is relatively new. In this context, this paper presents an approach to evaluate the discrimination power of different regions of a 3D facial surface for its potential use in face recognition systems. We propose the use of weighted average of unit normal vector on the facial surface as the feature for region-based face recognition from 3D point cloud data (PCD). The iterative closest point algorithm is employed for the registration of segmented regions of facial point clouds. A metric based on angular distance between normals is introduced to indicate the similarity between two surfaces of same facial region. Finally, the intra class correlation based discrimination score is formulated to find out the key facial regions such as the eyes, nose, and mouth that are significant while recognizing a person with facial surface PCD.
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