Mechatronics and Manufacturing Technology Center, Samsung Electronics Co., 443–742 Suwon, Korea.
IEEE Trans Image Process. 2011 Apr;20(4):1152-65. doi: 10.1109/TIP.2010.2083674. Epub 2010 Oct 4.
The authors present a robust face recognition system for large-scale data sets taken under uncontrolled illumination variations. The proposed face recognition system consists of a novel illumination-insensitive preprocessing method, a hybrid Fourier-based facial feature extraction, and a score fusion scheme. First, in the preprocessing stage, a face image is transformed into an illumination-insensitive image, called an "integral normalized gradient image," by normalizing and integrating the smoothed gradients of a facial image. Then, for feature extraction of complementary classifiers, multiple face models based upon hybrid Fourier features are applied. The hybrid Fourier features are extracted from different Fourier domains in different frequency bandwidths, and then each feature is individually classified by linear discriminant analysis. In addition, multiple face models are generated by plural normalized face images that have different eye distances. Finally, to combine scores from multiple complementary classifiers, a log likelihood ratio-based score fusion scheme is applied. The proposed system using the face recognition grand challenge (FRGC) experimental protocols is evaluated; FRGC is a large available data set. Experimental results on the FRGC version 2.0 data sets have shown that the proposed method shows an average of 81.49% verification rate on 2-D face images under various environmental variations such as illumination changes, expression changes, and time elapses.
作者提出了一种稳健的人脸识别系统,可用于在不受控制的光照变化下采集的大规模数据集。所提出的人脸识别系统由一种新颖的光照不变预处理方法、基于傅里叶的混合面部特征提取以及评分融合方案组成。首先,在预处理阶段,通过归一化和平滑梯度的积分,将面部图像转换为称为“积分归一化梯度图像”的光照不变图像。然后,对于互补分类器的特征提取,应用了基于混合傅里叶特征的多个面部模型。混合傅里叶特征从不同频率带宽的不同傅里叶域中提取,然后通过线性判别分析对每个特征进行单独分类。此外,通过具有不同眼距的多个归一化面部图像生成多个面部模型。最后,为了结合多个互补分类器的分数,应用了基于对数似然比的评分融合方案。使用人脸识别大挑战 (FRGC) 实验协议对所提出的系统进行了评估;FRGC 是一个大型可用数据集。在 FRGC 版本 2.0 数据集上的实验结果表明,所提出的方法在各种环境变化(例如光照变化、表情变化和时间流逝)下,对 2D 面部图像的平均验证率为 81.49%。