多视角三维人脸识别的自动特征提取

Xiaoguang Lu, Anil K. Jain
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引用次数: 142

摘要

目前的二维人脸识别系统在识别姿态变化较大的人脸时遇到了困难。利用三维人脸数据的位姿不变特征,有可能处理多视图人脸匹配。提出了一种基于方向最大值的特征提取器,用于同时估计鼻尖位置和姿态角。采用子空间表示的鼻廓模型来选择鼻尖的最佳候选者。在统计特征定位模型的辅助下,提出了一种多模态的眼、嘴角提取方案。利用自动特征提取器,开发了一个全自动三维人脸识别系统。该系统在两个数据库上进行评估,MSU数据库(来自100名受试者的300次多视图测试扫描)和UND数据库(来自277名受试者的953次近正面扫描)。自动系统提供的识别精度与手动标记特征点的系统的精度相当
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic feature extraction for multiview 3D face recognition
Current 2D face recognition systems encounter difficulties in recognizing faces with large pose variations. Utilizing the pose-invariant features of 3D face data has the potential to handle multiview face matching. A feature extractor based on the directional maximum is proposed to estimate the nose tip location and the pose angle simultaneously. A nose profile model represented by subspaces is used to select the best candidates for the nose tip. Assisted by a statistical feature location model, a multimodal scheme is presented to extract eye and mouth corners. Using the automatic feature extractor, a fully automatic 3D face recognition system is developed. The system is evaluated on two databases, the MSU database (300 multiview test scans from 100 subjects) and the UND database (953 near frontal scans from 277 subjects). The automatic system provides recognition accuracy that is comparable to the accuracy of a system with manually labeled feature points
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