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Achieving Passive Localization with Traffic Light Schedules in Urban Road Sensor Networks

机译:通过城市道路传感器网络中的交通信号灯时间表实现被动定位

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摘要

Localization is crucial for the monitoring applications of cities, such as road monitoring, environment surveillance, vehicle tracking, etc. In urban road sensor networks, sensors are often sparely deployed due to the hardware cost. Under this sparse deployment, sensors cannot communicate with each other via ranging hardware or one-hop connectivity, rendering the existing localization solutions ineffective. To address this issue, this paper proposes a novel Traffic Lights Schedule-based localization algorithm (TLS), which is built on the fact that vehicles move through the intersection with a known traffic light schedule. We can first obtain the law by binary vehicle detection time stamps and describe the law as a matrix, called a detection matrix. At the same time, we can also use the known traffic light information to construct the matrices, which can be formed as a collection called a known matrix collection. The detection matrix is then matched in the known matrix collection for identifying where sensors are located on urban roads. We evaluate our algorithm by extensive simulation. The results show that the localization accuracy of intersection sensors can reach more than 90%. In addition, we compare it with a state-of-the-art algorithm and prove that it has a wider operational region.
机译:本地化对于城市的监视应用至关重要,例如道路监视,环境监视,车辆跟踪等。在城市道路传感器网络中,由于硬件成本,传感器经常被多余地部署。在这种稀疏部署下,传感器无法通过测距硬件或单跳连接相互通信,从而使现有的本地化解决方案无效。为了解决这个问题,本文提出了一种新颖的基于交通信号灯时间表的定位算法(TLS),该算法基于车辆以已知的交通信号灯时间表通过交叉路口的事实。我们首先可以通过二进制车辆检测时间戳获得定律,并将定律描述为一个矩阵,称为检测矩阵。同时,我们还可以使用已知的交通信号灯信息来构建矩阵,这些矩阵可以形成为称为已知矩阵集合的集合。然后,将检测矩阵与已知矩阵集合匹配,以识别传感器在城市道路上的位置。我们通过广泛的仿真评估我们的算法。结果表明,交叉口传感器的定位精度可以达到90%以上。此外,我们将其与最先进的算法进行比较,并证明它具有更宽的操作范围。

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