Choi Jae Young, Ro Yong Man, Plataniotis Konstantinos N Kostas
Image and Video System Laboratory, Korea Advanced Institute of Science and Technology, Daejeon, Korea.
IEEE Trans Syst Man Cybern B Cybern. 2009 Oct;39(5):1217-30. doi: 10.1109/TSMCB.2009.2014245. Epub 2009 Mar 24.
In many current face-recognition (FR) applications, such as video surveillance security and content annotation in a web environment, low-resolution faces are commonly encountered and negatively impact on reliable recognition performance. In particular, the recognition accuracy of current intensity-based FR systems can significantly drop off if the resolution of facial images is smaller than a certain level (e.g., less than 20 x 20 pixels). To cope with low-resolution faces, we demonstrate that facial color cue can significantly improve recognition performance compared with intensity-based features. The contribution of this paper is twofold. First, a new metric called "variation ratio gain" (VRG) is proposed to prove theoretically the significance of color effect on low-resolution faces within well-known subspace FR frameworks; VRG quantitatively characterizes how color features affect the recognition performance with respect to changes in face resolution. Second, we conduct extensive performance evaluation studies to show the effectiveness of color on low-resolution faces. In particular, more than 3000 color facial images of 341 subjects, which are collected from three standard face databases, are used to perform the comparative studies of color effect on face resolutions to be possibly confronted in real-world FR systems. The effectiveness of color on low-resolution faces has successfully been tested on three representative subspace FR methods, including the eigenfaces, the fisherfaces, and the Bayesian. Experimental results show that color features decrease the recognition error rate by at least an order of magnitude over intensity-driven features when low-resolution faces (25 x 25 pixels or less) are applied to three FR methods.
在许多当前的人脸识别(FR)应用中,如视频监控安全和网络环境中的内容标注,低分辨率人脸经常出现,并对可靠的识别性能产生负面影响。特别是,如果面部图像的分辨率小于某个水平(例如,小于20×20像素),当前基于强度的FR系统的识别准确率会显著下降。为了应对低分辨率人脸,我们证明了与基于强度的特征相比,面部颜色线索可以显著提高识别性能。本文的贡献有两个方面。首先,提出了一种名为“变化率增益”(VRG)的新指标,从理论上证明在著名的子空间FR框架内颜色效应在低分辨率人脸上的重要性;VRG定量地描述了颜色特征如何随着人脸分辨率的变化而影响识别性能。其次,我们进行了广泛的性能评估研究,以展示颜色在低分辨率人脸上的有效性。特别是,从三个标准人脸数据库收集的341名受试者的3000多张彩色面部图像,用于对实际FR系统中可能遇到的人脸分辨率的颜色效应进行比较研究。颜色在低分辨率人脸上的有效性已在三种代表性的子空间FR方法上成功测试,包括特征脸、Fisher脸和贝叶斯方法。实验结果表明,当将低分辨率人脸(25×25像素或更小)应用于三种FR方法时,颜色特征比基于强度的特征至少降低了一个数量级的识别错误率。