A Mobile Camera Tracking System Using GbLN-PSO with an Adaptive Window

Z. Musa, R. A. Bakar, J. Watada
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引用次数: 1

Abstract

The availability of high quality and inexpensive video camera, as well as the increasing need for automated video analysis is leading towards a great deal of interest in numerous applications. However the video tracking systems is still having many open problems. Thus, some of research activities in a video tracking system are still being explored. Generally, most of the researchers are used a static camera in order to track an object motion. However, the use of a static camera system for detecting and tracking the motion of an object is only capable for capturing a limited view. Therefore, to overcome the above mentioned problem in a large view space, researcher may use several cameras to capture images. Thus, the cost will increases with the number of cameras. To overcome the cost increment a mobile camera is employed with the ability to track the wide field of view in an environment. Conversely, mobile camera technologies for tracking applications have faced several problems; simultaneous motion (when an object and camera are concurrently movable), distinguishing objects in occlusion, and dynamic changes in the background during data capture. In this study we propose a new method of Global best Local Neighborhood Oriented Particle Swarm Optimization (GbLN-PSO) to address these problems. The advantages of tracking using GbLN-PSO are demonstrated in experiments for intelligent human and vehicle tracking systems in comparison to a conventional method. The comparative study of the method is provided to evaluate its capabilities at the end of this paper.
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基于自适应窗口的GbLN-PSO移动摄像机跟踪系统
高质量和廉价的视频摄像机的可用性,以及对自动视频分析的日益增长的需求,导致了对许多应用的极大兴趣。然而,视频跟踪系统仍然存在许多未解决的问题。因此,视频跟踪系统的一些研究活动仍在探索中。一般来说,大多数研究人员都使用静态摄像机来跟踪物体的运动。然而,使用静态相机系统来检测和跟踪物体的运动只能捕获有限的视图。因此,为了在大视场空间中克服上述问题,研究人员可能会使用多个摄像机来捕获图像。因此,成本将随着摄像机数量的增加而增加。为了克服成本的增加,采用了一种具有在环境中跟踪大视场能力的移动相机。相反,用于跟踪应用的移动相机技术面临着几个问题;同时运动(当物体和相机同时移动时),在遮挡中区分物体,以及在数据捕获期间背景的动态变化。本文提出了一种面向全局最优局部邻域的粒子群优化算法(GbLN-PSO)来解决这些问题。在智能人和车辆跟踪系统的实验中,与传统的跟踪方法相比,GbLN-PSO的优越性得到了证明。本文最后对该方法进行了比较研究,以评价其性能。
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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