Automated face recognition and identification softwares are becoming part of our daily life; it finds its abode not only with Facebook's auto photo tagging, Apple's iPhoto, Google's Picasa, Microsoft's Kinect, but also in Homeland Security Department's dedicated biometric face detection systems. Most of these automatic face identification systems fail where the effects of aging come into the picture. Little work exists in the literature on the subject of face prediction that accounts for aging, which is a vital part of the computer face recognition systems. In recent years, individual face components' (e.g. eyes, nose, mouth) features based matching algorithms have emerged, but these approaches are still not efficient. Therefore, in this work we describe a Face Prediction Model (FPM), which predicts human face aging or growth related image variation using Principle Component Analysis (PCA) and Artificial Neural Network (ANN) learning techniques. The FPM captures the facial changes, which occur with human aging and predicts the facial image with a few years of gap with an acceptable accuracy of face matching from 76 to 86%.
翻译:自动面部识别和识别软件正在成为我们日常生活的一部分;它发现自己的住处不仅有Facebook自动照片标记、苹果的iPhoto、谷歌的Picasa、微软的Kinect, 而且还有国土安全部专用生物识别面部探测系统。这些自动面部识别系统大多在成形的影响方面失败了。关于面部预测的文献中很少提到老龄化是计算机面部识别系统的一个重要部分。近年来,个人面部组成部分(例如眼睛、鼻子、嘴)特征的匹配算法已经出现,但这些方法仍然效率不高。因此,在这项工作中,我们描述了一个面部预测模型(FPM),该模型利用原理部分分析(PCA)和人工神经网络(ANN)的学习技术预测人类面部面部的老龄化或增长相关的图像变异。FPM捕捉了面部变化,这些变化与人类面部成形和预测面部图像相隔几年,面部的准确度为76-86 %。