Zhang Baochang, Shan Shiguang, Chen Xilin, Gao Wen
Harbin Institute of Technology, China.
IEEE Trans Image Process. 2007 Jan;16(1):57-68. doi: 10.1109/tip.2006.884956.
A novel object descriptor, histogram of Gabor phase pattern (HGPP), is proposed for robust face recognition. In HGPP, the quadrant-bit codes are first extracted from faces based on the Gabor transformation. Global Gabor phase pattern (GGPP) and local Gabor phase pattern (LGPP) are then proposed to encode the phase variations. GGPP captures the variations derived from the orientation changing of Gabor wavelet at a given scale (frequency), while LGPP encodes the local neighborhood variations by using a novel local XOR pattern (LXP) operator. They are both divided into the nonoverlapping rectangular regions, from which spatial histograms are extracted and concatenated into an extended histogram feature to represent the original image. Finally, the recognition is performed by using the nearest-neighbor classifier with histogram intersection as the similarity measurement. The features of HGPP lie in two aspects: 1) HGPP can describe the general face images robustly without the training procedure; 2) HGPP encodes the Gabor phase information, while most previous face recognition methods exploit the Gabor magnitude information. In addition, Fisher separation criterion is further used to improve the performance of HGPP by weighing the subregions of the image according to their discriminative powers. The proposed methods are successfully applied to face recognition, and the experiment results on the large-scale FERET and CAS-PEAL databases show that the proposed algorithms significantly outperform other well-known systems in terms of recognition rate.
为实现鲁棒的人脸识别,提出了一种新的目标描述符——伽柏相位模式直方图(HGPP)。在HGPP中,首先基于伽柏变换从面部提取象限位编码。然后提出全局伽柏相位模式(GGPP)和局部伽柏相位模式(LGPP)来编码相位变化。GGPP捕捉在给定尺度(频率)下伽柏小波方向变化产生的变化,而LGPP通过使用一种新颖的局部异或模式(LXP)算子对局部邻域变化进行编码。它们都被划分为不重叠的矩形区域,从中提取空间直方图并连接成一个扩展的直方图特征来表示原始图像。最后,使用最近邻分类器,以直方图相交作为相似性度量进行识别。HGPP的特征体现在两个方面:1)HGPP无需训练过程就能稳健地描述一般面部图像;2)HGPP对伽柏相位信息进行编码,而大多数先前的人脸识别方法利用的是伽柏幅度信息。此外,还进一步使用了Fisher分离准则,根据图像子区域的判别能力对其进行加权,以提高HGPP的性能。所提出的方法成功应用于人脸识别,在大规模FERET和CAS - PEAL数据库上的实验结果表明,所提出的算法在识别率方面显著优于其他知名系统。