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Research on a Face Real-time Tracking Algorithm Based on Particle Filter Multi-Feature Fusion

机译:基于粒子滤波多特征融合的人脸实时跟踪算法研究

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With the revolutionary development of cloud computing and internet of things, the integration and utilization of “big data” resources is a hot topic of the artificial intelligence research. Face recognition technology information has the advantages of being non-replicable, non-stealing, simple and intuitive. Video face tracking in the context of big data has become an important research hotspot in the field of information security. In this paper, a multi-feature fusion adaptive adjustment target tracking window and an adaptive update template particle filter tracking framework algorithm are proposed. Firstly, the skin color and edge features of the face are extracted in the video sequence. The weighted color histogram are extracted which describes the face features. Then we use the integral histogram method to simplify the histogram calculation of the particles. Finally, according to the change of the average distance, the tracking window is adjusted to accurately track the tracking object. At the same time, the algorithm can adaptively update the tracking template which improves the accuracy and accuracy of the tracking. The experimental results show that the proposed method improves the tracking effect and has strong robustness in complex backgrounds such as skin color, illumination changes and face occlusion.
机译:随着云计算和物联网的革命性发展,“大数据”资源的整合与利用成为人工智能研究的热点。人脸识别技术信息具有不可复制,不可窃取,简单直观的优点。大数据环境下的视频人脸跟踪已经成为信息安全领域的重要研究热点。提出了一种多特征融合自适应调整目标跟踪窗口和自适应更新模板粒子滤波跟踪框架算法。首先,在视频序列中提取脸部的肤色和边缘特征。提取描述面部特征的加权颜色直方图。然后,我们使用积分直方图方法来简化粒子的直方图计算。最后,根据平均距离的变化,调整跟踪窗口,以准确地跟踪跟踪对象。同时,该算法可以自适应地更新跟踪模板,从而提高了跟踪的准确性和准确性。实验结果表明,该方法提高了跟踪效果,在肤色,光照变化和面部遮挡等复杂背景下具有较强的鲁棒性。

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