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Privacy-Oriented Successive Approximation Image Position Follower Processing

机译:面向隐私的连续近似图像位置跟随器处理

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In this paper, we analyze the location-following processing of the image by successive approximation with the need for directed privacy. To solve the detection problem of moving the human body in the dynamic background, the motion target detection module integrates the two ideas of feature information detection and human body model segmentation detection and combines the deep learning framework to complete the detection of the human body by detecting the feature points of key parts of the human body. The detection of human key points depends on the human pose estimation algorithm, so the research in this paper is based on the bottom-up model in the multiperson pose estimation method; firstly, all the human key points in the image are detected by feature extraction through the convolutional neural network, and then the accurate labelling of human key points is achieved by using the heat map and offset fusion optimization method in the feature point confidence map prediction, and finally, the human body detection results are obtained. In the study of the correlation algorithm, this paper combines the HOG feature extraction of the KCF algorithm and the scale filter of the DSST algorithm to form a fusion correlation filter based on the principle study of the MOSSE correlation filter. The algorithm solves the problems of lack of scale estimation of KCF algorithm and low real-time rate of DSST algorithm and improves the tracking accuracy while ensuring the real-time performance of the algorithm.
机译:在本文中,我们通过连续近似来分析图像的位置之后,需要针对隐私的需要。为了解决移动人体在动态背景中移动的检测问题,运动目标检测模块集成了特征信息检测和人体模型分割检测的两个思想,并结合了深度学习框架来通过检测完成人体的检测人体关键部分的特征点。人体关键点的检测取决于人类姿势估计算法,因此本文的研究基于多孔姿势估计方法的自下而上模型;首先,通过卷积神经网络通过特征提取来检测图像中的所有人的关键点,然后通过在特征点归信地图预测中使用热图和偏移融合优化方法来实现人类关键点的精确标记,最后,获得人体检测结果。在研究相关算法的研究中,本文将KCF算法的HOG特征提取和DSST算法的比例滤波器组合在于基于MOSSE相关滤波器的原理研究形成融合相关滤波器。该算法解决了KCF算法缺乏规模估计的问题,以及DSST算法的低实时速率,并提高了算法的实时性能的同时提高了跟踪精度。

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