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Research on video face detection based on AdaBoost algorithm training classifier

机译:基于AdaBoost算法训练分类器的视频人脸检测研究

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In this paper, we train the classifier with CAS-PEAL-R1 face database which vary in pose, lighting, accessories and expression in order to solve the complexity of face detection in surveillance video, and then apply the classifier to video face detection system. First of all, single frame from video sequence is wiped off noise by the median filtering and average filtering, after that, the skin color segmentation of the preprocessed images was performed using the simple skin color model established in YCbCr space. We use geometric rules to exclude a part of facelike region in order to further accelerate the speed of face detection, and then use the classifier for the remaining face detection. Finally, the experiment results show that the algorithm can detect faces in surveillance video quickly and precisely based on OpenCV and Qt platform.
机译:为了解决监控视频中人脸检测的复杂性,本文利用CAS-PEAL-R1人脸数据库训练了分类器,该人脸数据库的姿势,照明,配件和表情各不相同,从而解决了该问题。首先,通过中值滤波和平均滤波消除视频序列中的单个帧的噪声,然后,使用在YCbCr空间中建立的简单肤色模型对预处理图像进行肤色分割。我们使用几何规则排除面部区域的一部分,以进一步加快面部检测的速度,然后将分类器用于剩余的面部检测。最后,实验结果表明,基于OpenCV和Qt平台,该算法可以快速,准确地检测出监控视频中的人脸。

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