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An Improved AdaBoost face detection algorithm based on the weighting parameters of weak classifier

机译:一种基于弱分类器加权参数的改进型AdaBoost人脸检测算法

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Weighting parameters are introduced to ensure the weak classifier that comes with the False Rejection Rate (FRR) to significantly reduce the False Acceptance Rate (FAR). Knowing that the Haar-Like features redundancy, the most effective combination of features is chosen from all the features upon the completion of the classifier training, aiming to improve the speed and rate of face recognition. The results show that the improved AdaBoost algorithm saw an improved recognition rate of 15% compared to the traditional algorithm, where the video image sequence presented an average face recognition rate of 21.5ms/frame, being able to meet the requirements of real-time face detection.
机译:引入加权参数以确保错误拒绝率(FRR)随附的弱分类器可以显着降低错误接受率(FAR)。知道Haar-Like具有冗余功能后,在完成分类器训练后,会从所有功能中选择最有效的功能组合,以提高人脸识别的速度和速度。结果表明,与传统算法相比,改进后的AdaBoost算法的识别率提高了15%,传统算法的视频图像序列平均人脸识别率为21.5ms /帧,能够满足实时人脸的需求。检测。

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