Age-Invariant Person Identification by Segmentation Verification of Face Image

Yuta Somada, W. Ohyama, T. Wakabayashi
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Abstract

Face recognition has been a major research theme over the last two decades. There are several problems to be solved to improve the performance of face recognition. Such major problems involve appearance variation due to pose, illumination, expression, and aging. In particular, aging includes internal and external factors that cause facial appearance variation and, consequently, it is the most difficult problem to handle. In this paper, we propose a face recognition method that is robust against facial appearance variation due to aging. The proposed method employs segmentation verification of frontal face images that consists of the following three steps. (1) Face image segmentation generates three regional subimages from the input face image. (2) A matching score is calculated using gradient features from a pair consisting of the input image and a registered image for each of the three generated subimages and original (whole face) image. We obtain four matching scores. (3) The verifying classifier evaluates the matching score vector formed of the matching scores calculated for each of the four images and predicts the a posteriori probability that two matching images belong to the same person. The results of an experimental evaluation with the FGNET and MORPH face aging datasets clarify the effectiveness of the proposed method for age invariant face recognition
基于人脸图像分割验证的年龄不变人识别
在过去的二十年里,人脸识别一直是一个主要的研究主题。为了提高人脸识别的性能,有几个问题需要解决。这些主要问题包括由于姿势、光照、表情和年龄造成的外观变化。特别是,衰老包括导致面部外观变化的内部和外部因素,因此,它是最难处理的问题。在本文中,我们提出了一种鲁棒的人脸识别方法,该方法对面部外观变化具有抗衰老的能力。该方法采用正面人脸图像的分割验证,分为以下三个步骤:(1)人脸图像分割从输入的人脸图像中生成三个区域子图像。(2)对生成的三个子图像和原始(整张脸)图像,使用由输入图像和配准图像组成的一对的梯度特征计算匹配分数。我们得到四个匹配的分数。(3)验证分类器对四幅图像中每幅图像计算的匹配分数形成的匹配分数向量进行评估,并预测两幅匹配图像属于同一人的后验概率。FGNET和MORPH人脸老化数据集的实验评估结果阐明了该方法在年龄不变人脸识别中的有效性
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