Object Tracking Using Modified Lossy Extended Kalman Filter

Mohammadreza Alimadadi, M. Stojanovic, P. Closas
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引用次数: 3

Abstract

We address the problem of object tracking in an underwater acoustic sensor network in which distributed nodes measure the strength of field generated by moving objects, encode the measurements into digital data packets, and transmit the packets to a fusion center in a random access manner. We allow for imperfect communication links, where information packets may be lost due to noise and collisions. The packets that are received correctly are used to estimate the objects' trajectories by employing an extended Kalman Filter, where provisions are made to accommodate a randomly changing number of obseravtions in each iteration. An adaptive rate control scheme is additionally applied to instruct the sensor nodes on how to adjust their transmission rate so as to improve the location estimation accuracy and the energy efficiency of the system. By focusing explicitly on the objects' locations, rather than working with a pre-specified grid of potential locations, we resolve the spatial quantization issues associated with sparse identification methods. Finally, we extend the method to address the possibility of objects entering and departing the observation area, thus improving the scalability of the system and relaxing the requirement for accurate knowledge of the objects' initial locations. Performance is analyzed in terms of the mean-squared localization error and the trade-offs imposed by the limited communication bandwidth.
基于改进有损扩展卡尔曼滤波的目标跟踪
我们解决了一个水声传感器网络中的目标跟踪问题,在该网络中,分布式节点测量运动物体产生的场强度,将测量结果编码为数字数据包,并以随机访问的方式将数据包传输到融合中心。我们允许不完美的通信链路,其中信息包可能由于噪声和碰撞而丢失。通过使用扩展的卡尔曼滤波器,正确接收的数据包用于估计物体的轨迹,其中规定在每次迭代中适应随机变化的观察数量。此外,还采用自适应速率控制方案指导传感器节点如何调整传输速率,以提高系统的位置估计精度和能效。通过明确地关注对象的位置,而不是使用预先指定的潜在位置网格,我们解决了与稀疏识别方法相关的空间量化问题。最后,我们扩展了该方法,以解决物体进入和离开观测区域的可能性,从而提高了系统的可扩展性,并放宽了对物体初始位置的准确知识的要求。根据均方定位误差和有限通信带宽所带来的折衷来分析性能。
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