Zhou Yi, Zhou Sheng-Tong, Zhong Zuo-Yang, Li Hong-Guang
State Key Laboratory of Mechanical System and Vibration, Shanghai Jiao Tong University, No. 800 Dongchuan Road, Shanghai 200240, China.
Opt Express. 2013 May 6;21(9):11294-308. doi: 10.1364/OE.21.011294.
Almost all the face recognition algorithms are unsatisfied due to illumination variation. Feature with high frequency represents the face intrinsic structure according to the common assumption that illumination varies slowly and the face intrinsic feature varies rapidly. In this paper, we will propose an adaptive scheme based on FBEEMD and detail feature fusion. FBEEMD is a fast version of BEEMD without time-consuming surface interpolation and iteration computation. It can decompose an image into sub-images with high frequency matching detail feature and sub-images with low frequency corresponding to contour feature. However, it is difficult to determine by quantitative analysis that which sub-images with high frequency can be used for reconstructing an illumination-invariant face. Thus, two measurements are proposed to calculate weights for quantifying the detail feature. With this fusion technique, one can reconstruct a more illumination-neutral facial image to improve face recognition rate. Verification experiments using classical recognition algorithms are tested with Yale B, PIE and FERET databases. The encouraging results show that the proposed scheme is very effective when dealing with face images under variable lighting condition.
由于光照变化,几乎所有的人脸识别算法都不尽人意。根据光照变化缓慢而人脸固有特征变化迅速这一普遍假设,高频特征代表了人脸的固有结构。在本文中,我们将提出一种基于快速双向经验模态分解(FBEEMD)和细节特征融合的自适应方案。FBEEMD是双向经验模态分解(BEEMD)的快速版本,无需耗时的曲面插值和迭代计算。它可以将一幅图像分解为高频匹配细节特征的子图像和低频对应轮廓特征的子图像。然而,很难通过定量分析确定哪些高频子图像可用于重建光照不变的人脸。因此,提出了两种测量方法来计算权重以量化细节特征。利用这种融合技术,可以重建出更光照中性的面部图像,以提高人脸识别率。使用经典识别算法的验证实验在耶鲁B、PIE和FERET数据库上进行测试。令人鼓舞的结果表明,所提出的方案在处理可变光照条件下的人脸图像时非常有效。