Ramanathan Narayanan, Chellappa Rama
Department of Electrical and Computer Engineering, University of Maryland, College Park, MD 20742-3275, USA.
IEEE Trans Image Process. 2006 Nov;15(11):3349-61. doi: 10.1109/tip.2006.881993.
Human faces undergo considerable amounts of varialions with aging. While face recognition systems have been proven to be sensitive to factors such as illumination and pose, their sensitivity to facial aging effects is yet to be studied. How does age progression affect the similarity between a pair of face images of an individual? What is the confidence associated with establishing the identity between a pair of age separated face images? In this paper, we develop a Bayesian age difference classifier that classifies face images of individuals based on age differences and performs face verification across age progression. Further, we study the similarity of faces across age progression. Since age separated face images invariably differ in illumination and pose, we propose preprocessing methods for minimizing such variations. Experimental results using a database comprising of pairs of face images that were retrieved from the passports of 465 individuals are presented. The verification system for faces separated by as many as nine years, attains an equal error rate of 8.5%.
随着年龄增长,人脸会经历相当大的变化。虽然人脸识别系统已被证明对光照和姿态等因素敏感,但其对面部衰老影响的敏感性尚待研究。年龄增长如何影响个体一对面部图像之间的相似度?在一对年龄不同的面部图像之间建立身份关联的置信度是多少?在本文中,我们开发了一种贝叶斯年龄差异分类器,该分类器基于年龄差异对个体的面部图像进行分类,并在年龄增长过程中进行人脸识别。此外,我们研究了不同年龄阶段面部的相似度。由于年龄不同的面部图像在光照和姿态方面必然存在差异,我们提出了预处理方法以尽量减少此类差异。本文展示了使用从465个人的护照中获取的成对面部图像数据库进行的实验结果。对于相隔长达九年的面部验证系统,其等错误率达到了8.5%。