3D face analysis for demographic biometrics

Ryan Tokola, A. Mikkilineni, Chris Boehnen
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引用次数: 11

Abstract

Despite being increasingly easy to acquire, 3D data is rarely used for face-based biometrics applications beyond identification. Recent work in image-based demographic biometrics has enjoyed much success, but these approaches suffer from the well-known limitations of 2D representations, particularly variations in illumination, texture, and pose, as well as a fundamental inability to describe 3D shape. This paper shows that simple 3D shape features in a face-based coordinate system are capable of representing many biometric attributes without problem-specific models or specialized domain knowledge. The same feature vector achieves impressive results for problems as diverse as age estimation, gender classification, and race classification.
用于人口统计生物识别的三维人脸分析
尽管越来越容易获取,3D数据很少用于人脸识别以外的生物识别应用。最近在基于图像的人口统计生物识别方面的工作取得了很大的成功,但是这些方法受到众所周知的2D表示的限制,特别是光照、纹理和姿势的变化,以及无法描述3D形状的基本缺陷。本文表明,在基于人脸的坐标系统中,简单的三维形状特征能够表示许多生物特征属性,而不需要特定问题的模型或专门的领域知识。同样的特征向量在年龄估计、性别分类和种族分类等不同的问题上取得了令人印象深刻的结果。
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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