Partial matching of interpose 3D facial data for face recognition

P. Perakis, G. Passalis, T. Theoharis, G. Toderici, I. Kakadiaris
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引用次数: 38

Abstract

Three-dimensional face recognition has lately received much attention due to its robustness in the presence of lighting and pose variations. However, certain pose variations often result in missing facial data. This is common in realistic scenarios, such as uncontrolled environments and uncooperative subjects. Most previous 3D face recognition methods do not handle extensive missing data as they rely on frontal scans. Currently, there is no method to perform recognition across scans of different poses. A unified method that addresses the partial matching problem is proposed. Both frontal and side (left or right) facial scans are handled in a way that allows interpose retrieval operations. The main contributions of this paper include a novel 3D landmark detector and a deformable model framework that supports symmetric fitting. The landmark detector is utilized to detect the pose of the facial scan. This information is used to mark areas of missing data and to roughly register the facial scan with an Annotated Face Model (AFM). The AFM is fitted using a deformable model framework that introduces the method of exploiting facial symmetry where data are missing. Subsequently, a geometry image is extracted from the fitted AFM that is independent of the original pose of the facial scan. Retrieval operations, such as face identification, are then performed on a wavelet domain representation of the geometry image. Thorough testing was performed by combining the largest publicly available databases. To the best of our knowledge, this is the first method that handles side scans with extensive missing data (e.g., up to half of the face missing).
用于人脸识别的插入式三维人脸数据部分匹配
三维人脸识别因其在光照和姿态变化下的鲁棒性而受到广泛关注。然而,某些姿势的变化往往会导致面部数据的丢失。这在现实场景中很常见,比如不受控制的环境和不合作的对象。大多数以前的3D人脸识别方法不能处理大量丢失的数据,因为它们依赖于正面扫描。目前,还没有一种方法可以在不同姿势的扫描中进行识别。提出了一种解决部分匹配问题的统一方法。正面和侧面(左或右)面部扫描的处理方式允许介入检索操作。本文的主要贡献包括一种新的三维地标检测器和支持对称拟合的可变形模型框架。利用地标检测器检测人脸扫描的姿态。该信息用于标记缺失数据的区域,并与注释面部模型(AFM)粗略注册面部扫描。AFM使用可变形的模型框架进行拟合,该框架引入了利用数据缺失的面部对称性的方法。随后,从拟合的AFM中提取与面部扫描原始姿态无关的几何图像。检索操作,如人脸识别,然后在几何图像的小波域表示上执行。通过结合最大的公开可用数据库进行了彻底的测试。据我们所知,这是处理大量缺失数据(例如,多达一半的脸缺失)的侧扫描的第一种方法。
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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