正面人脸图像中人脸特征的自动鲁棒检测

A. Majumder, L. Behera, K. Venkatesh
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引用次数: 48

摘要

图像中人脸特征的自动检测是人脸识别、面部表情识别、三维人脸建模、人脸特征跟踪等各种人脸图像判读工作的重要阶段。检测不同面部表情和光照下的眼睛、瞳孔、嘴巴、鼻子、鼻孔、嘴角、眼角等面部特征是一项具有挑战性的任务。在本文中,我们提出了不同的面部特征全自动检测方法。维奥拉-琼斯的目标探测器和哈尔级联特征一起用于检测面部、眼睛和鼻子。利用面部几何的基本概念,提出了定位嘴位、鼻位和眼位的新技术。对眼、鼻、口等特征的检测区域进行估计,显著提高了检测精度。提出了一种利用HSV颜色空间的h平面从眼睛检测区域检测瞳孔的算法。主要使用人脸正面图像FEI数据库对算法进行测试。该算法在100张具有两种不同面部表情(中性脸和微笑脸)的正面人脸图像上进行了测试。结果表明,唇、唇角、鼻子和鼻孔的检测准确率为100%。眼角和瞳孔检测的准确率约为95%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic and Robust Detection of Facial Features in Frontal Face Images
Automatic detection of facial features in an image is important stage for various facial image interpretation work, such as face recognition, facial expression recognition, 3Dface modeling and facial features tracking. Detection of facial features like eye, pupil, mouth, nose, nostrils, lip corners, eye corners etc., with different facial expression and illumination is a challenging task. In this paper, we presented different methods for fully automatic detection of facial features. Viola-Jones' object detector along with haar-like cascaded features are used to detect face, eyes and nose. Novel techniques using the basic concepts of facial geometry, are proposed to locate the mouth position, nose position and eyes position. The estimation of detection region for features like eye, nose and mouth enhanced the detection accuracy significantly. An algorithm, using the H-plane of the HSV color space is proposed for detecting eye pupil from the eye detected region. FEI database of frontal face images is mainly used to test the algorithm. Proposed algorithm is tested over 100 frontal face images with two different facial expression (neutral face and smiling face). The results obtained are found to be 100% accurate for lip, lip corners, nose and nostrils detection. The eye corners, and eye pupil detection is giving approximately 95% accurate results.
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