Face detection and facial feature extraction in color image

Zhi-fang Liu, Zhifu You, A.K. Jain, Yun-qiong Wang
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引用次数: 34

Abstract

Face detection and facial feature extraction plays an important role in video surveillance, human computer interaction and face recognition. Color is a useful piece of information in computer vision especially for skin detection. In this paper, we propose a novel approach for skin segmentation and facial feature extraction. The proposed skin segmentation is a method for integrating the chrominance components of nonlinear YCrCb color model. The goal of skin detection is to group pixels to form possible face candidate regions and then use connected components analysis for pixels grouping. In order to detect the facial feature in scale invariant, the possible face candidate regions will be normalized, and then texture information in these regions will be segmented by means of mean and variance of face region. Edge will be detected using the method based on multi-scale morphological. Eye will be located by the PCA edge direction. The others feature, such as nose and mouth, also located using the geometrical shape information. As all the above-mentioned techniques are simple and efficient, the proposed method is computational effective and suitable for practical applications. In our experiments, the proposed method has been successfully evaluated using two different test datasets. The detection accuracy is around 98%, the average run time ranged from 0.1-0.3 sec per frame.
彩色图像中的人脸检测与特征提取
人脸检测和人脸特征提取在视频监控、人机交互和人脸识别等领域发挥着重要作用。颜色是计算机视觉中非常有用的信息,尤其适用于皮肤检测。本文提出了一种新的皮肤分割和面部特征提取方法。提出的皮肤分割方法是一种对非线性YCrCb颜色模型的色度分量进行整合的方法。皮肤检测的目标是对像素进行分组,形成可能的人脸候选区域,然后使用连通分量分析对像素进行分组。为了在尺度不变性下检测人脸特征,首先对可能的人脸候选区域进行归一化处理,然后利用人脸区域的均值和方差对这些区域的纹理信息进行分割。采用基于多尺度形态学的边缘检测方法。根据PCA边缘方向定位眼睛。其他的特征,如鼻子和嘴,也是利用几何形状信息定位的。上述方法简单、高效,具有计算效率高、适合实际应用的特点。在我们的实验中,使用两个不同的测试数据集成功地评估了所提出的方法。检测精度约为98%,平均运行时间为每帧0.1-0.3秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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