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Efficient Face Detection and Tracking with Extended CAMSHIFT and Haar-Like Features

机译:扩展的CAMSHIFT和Haar-Like功能可实现有效的人脸检测和跟踪

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This paper presents a new approach to solve the problem of real-time robust face detection and tracking in complex environment. We propose a two level approach to detect faces and tracking. The lower level of the approach implements the extraction of face candidates using the combination of skin color model and haar-like features based adaboost learning algorithm. With this method, multiple-view faces are able to be detected in real-time with high recognition accuracy. The higher level of approach implements the robust face tracking with extended CAMSHIFT (Continuous Adaptive Mean SHIFT). The experimental results show that the proposed algorithm is robust and efficient to detect and track the faceof-interest in the cases of clutter background and the occurrence of occlusion.
机译:本文提出了一种解决复杂环境下实时鲁棒人脸检测和跟踪问题的新方法。我们提出了一种两级方法来检测人脸并进行跟踪。该方法的较低级别使用皮肤颜色模型和基于adarost学习算法的类似haar的特征的组合来实现人脸候选的提取。利用这种方法,能够以高识别精度实时检测多视角面部。更高级别的方法通过扩展的CAMSHIFT(连续自适应均值SHIFT)实现了鲁棒的人脸跟踪。实验结果表明,所提出的算法在背景杂乱和遮挡发生的情况下,能够有效地检测和跟踪感兴趣的人脸。

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