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Detection, Classification, and Collaborative Tracking of Multiple Targets Using Video Sensors

机译:使用视频传感器检测,分类和协同跟踪多个目标

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The study of collaborative, distributed, real-time sensor networks is an emerging research area. Such networks are expected to play an essential role in a number of applications such as, surveillance and tracking of vehicles in the battlefield of the future. This paper proposes an approach to detect and classify multiple targets, and collaboratively track their position and velocity utilizing video cameras. Arbitrarily place cameras collaboratively perform self-calibration and provide complete battlefield coverage. If some of the cameras are equipped with a GPS system, they are able to metrically reconstruct the scene and determine the absolute coordinates of the tracked targets. A background subtraction scheme combined with a Markov random field based approach is used to detect the target even when it becomes stationary. Targets are continuously tracked using a distributed Kalman filter approach. As the targets move the coverage is handed over to the "best" neighboring cluster of sensors. This paper demonstrates the potential for the development of distributed optimal sensor networks and addresses problems and tradeoffs associated with this particular implementation.
机译:协同,分布式实时传感器网络的研究是一种新兴的研究区域。预计这些网络将在许多应用中发挥重要作用,例如未来战场的车辆的监视和跟踪。本文提出了一种检测和分类多个目标的方法,并协作追踪其利用摄像机的位置和速度。任意放置相机协作执行自校准并提供完整的战场覆盖范围。如果有些相机配备了GPS系统,则能够重建场景并确定跟踪目标的绝对坐标。与马尔可夫随机场基础的方法组合的背景减法方案用于检测目标即使变得静止。使用分布式卡尔曼滤波器方法持续跟踪目标。随着目标移动,覆盖范围被交给“最佳”相邻的传感器群集。本文展示了发布分布式最佳传感器网络的潜力,并解决了与此特定实现相关的问题和权衡。

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