Research on abnormal behavior target tracking algorithm in airport intelligent video surveillance

Daihao Zhang, Xiaoyan Qian, Yanlin Zhang
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引用次数: 2

Abstract

With the rapid development of China's civil aviation industry, the airport is facing increasing pressure on security. In this paper, the target tracking algorithm in Intelligent Video Surveillance (IVS) is studied. It aims to provide ideas and reference for the development and implementation of high performance intelligent video surveillance system. The main contents of this paper are as follows: Aiming at the problem of tracking failure caused by occlusion, deformation and illumination changes, this paper proposes a target tracking algorithm that combines the apparent features and depth characteristics. Firstly, the CNN network is trained by a large number of pedestrian databases, and then the depth characteristics of the target area are extracted by trained CNN network. At the same time, the color histogram of the target area in HSV space is calculated, and the depth feature and color feature are combined to get the whole feature. Finally, a number of hypothetical states are estimated under the framework of particle filter, the optimal position of the target is obtained, the tracking result is obtained, and the template is updated. Finally, the resampling is carried out according to the degeneration of the particle. Experiments show that the tracking algorithm has good tracking robustness. Finally, the target tracking system is designed and simulated on the Matlab platform. The validity and practicability of the algorithm are verified.
机场智能视频监控中异常行为目标跟踪算法研究
随着中国民航业的快速发展,机场面临着越来越大的安全压力。本文研究了智能视频监控中的目标跟踪算法。旨在为高性能智能视频监控系统的开发和实现提供思路和参考。本文的主要内容如下:针对遮挡、变形和光照变化导致的目标跟踪失败问题,提出了一种结合视特征和深度特征的目标跟踪算法。首先通过大量的行人数据库对CNN网络进行训练,然后通过训练好的CNN网络提取目标区域的深度特征。同时,计算目标区域在HSV空间中的颜色直方图,并将深度特征和颜色特征相结合,得到整体特征。最后,在粒子滤波框架下对多个假设状态进行估计,得到目标的最优位置,得到跟踪结果,并更新模板。最后,根据粒子的退化情况进行重采样。实验表明,该跟踪算法具有良好的跟踪鲁棒性。最后,在Matlab平台上对目标跟踪系统进行了设计和仿真。验证了该算法的有效性和实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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