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A rapid face detection method based on skin color model and local binary gradient feature

机译:基于肤色模型和局部二进制梯度特征的快速人脸检测方法

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This paper proposed a fast facedetection method based on the skin color feature and local binary gradient feature. First, according to the clustering of human skin color in the YCbCr color space, the skin color area is detected in the image. Then, it is coarsely fast judged whether if the face is in the skin color area. Finally, the local binary gradient feature is used to judge face accurately, and the weights of the local binary gradient feature is found by using AdaBoost train algorithm. For improved the efficiency of algorithm, the algorithm is accelerated by using the method of the integral image, the cascade classifier and the search order from big to small. The algorithm was tested by a set with 450 color images which the size is 896 ×592. It can find that the average detection time of new algorithm has reduced about 17.1% compare with the face detection algorithm of Paul Viola. The detection accuracy is similar with algorithm of Paul Viola.
机译:提出了一种基于肤色特征和局部二进制梯度特征的快速人脸检测方法。首先,根据人类皮肤在YCbCr颜色空间中的聚类,在图像中检测到皮肤颜色区域。然后,粗略地快速判断面部是否在肤色区域中。最后,利用局部二元梯度特征来准确判断人脸,并利用AdaBoost训练算法求出局部二元梯度特征的权重。为了提高算法效率,采用积分图像,级联分类器和搜索顺序从大到小的方法对算法进行了加速。该算法由一组包含450张彩色图像的测试,尺寸为896×592。可以发现,与Paul Viola的人脸检测算法相比,新算法的平均检测时间减少了约17.1%。检测精度与Paul Viola的算法相似。

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