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Multi-face recognition and dynamic tracking based on reinforcement learning algorithm

机译:基于钢筋学习算法的多面识别与动态跟踪

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Aiming at the problem that the current low accuracy rate of face detection and target tracking, a reinforcement learning algorithm is proposed, which integrates face detection technology and target tracking technology organically, adopts the face detection algorithm based on Multi-Task Convolutional Neural Network (MTCNN) and target tracking algorithm based on Kalman filtering, so as to realize face detection, multiplayer face recognition and dynamic tracking of personnel movement. In this paper, the configuration environment is Anaconda, the operating platform is PyCharm, the video-based face detection and dynamic capture and rapid identification system has been designed and developed. The system consists of two modules: face detection module and target tracking module. The optimized face detection and dynamic capture algorithm improved the detection success rate by about 11.5%, the face detection success rate by about 15.2%, the dynamic capture success rate increased by about 12.0%, and the optimized system has a wider practicality.
机译:针对电流低精度率的面部检测和目标跟踪的问题,提出了一种加强学习算法,其中有机集成了面部检测技术和目标跟踪技术,采用了基于多任务卷积神经网络的面部检测算法(MTCNN )基于卡尔曼滤波的目标跟踪算法,实现人员运动的面对检测,多人面部识别和动态跟踪。在本文中,配置环境是Anaconda,操作平台是Pycharm,设计和开发了基于视频的面部检测和动态捕获和快速识别系统。该系统由两个模块组成:面部检测模块和目标跟踪模块。优化的面部检测和动态捕获算法将检测成功率提高了约11.5%,面部检测成功率约为15.2%,动态捕获成功率提高了约12.0%,优化的系统具有更广泛的实用性。

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