基于能量检测的目标跟踪

Xuezhi Wang, D. Musicki
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引用次数: 7

摘要

基于能量的检测测量传感器从目标发射的接收信号强度(RSS)。在本文中,我们提出了一种通过基于能量的检测来估计传感器场上运动目标轨迹的新方法,作为三边定位或非线性估计的替代方法。在二维情况下,由两个传感器的RSS比率描述的可能目标位置使用一组称为位置测量的高斯随机变量进行近似。在每次数据收集时,可以从RSS比中找到几组这样的测量值,这是由于多个传感器检测。利用航迹分裂滤波器进行测量融合和目标状态估计。基于高斯密度近似的RSS比率数据映射在所提出的目标跟踪方法中起着关键作用,并且具有鲁棒性,因为它可以承受较大的RSS噪声,并且使用额外的传感器检测来提高基于三边测量的跟踪性能。通过一个小型声传感器网络跟踪运动目标的实例,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Target tracking using energy based detections
Energy based detection measures sensor received signal strength (RSS) transmitted from a target. In this paper, we propose a new approach for estimating a moving target trajectory over a sensor field via energy based detections as an alternative to trilateration positioning or nonlinear estimation. In 2D case, possible target locations described by a RSS ratio from two sensors are approximated using a set of Gaussian random variables which are refereed to as location measurements. At each data collection time, several sets of such measurements can be found from RSS ratios which are due to multiple sensor detections. A track splitting filter is used to perform either measurement fusion and target state estimation using these measurements. The RSS ratio data mapping via Gaussian density approximation plays a key role in the proposed target tracking method and is robust in the sense that it can tolerate larger RSS noise and using additional sensor detections to improve tracking performance over trilateration based techniques. The effectiveness of the propose method is demonstrated via an example of tracking a moving target over a sensor network of small acoustic sensors.
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