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Multi-Emitter Localization via Concurrent Variational Bayesian Inference in UAV-Based WSN

机译:基于UAV的WSN的并发变化贝叶斯推论多发射器本地化

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摘要

Applying Compressive Sensing (CS) to Received Signal Strength (RSS) based multi-emitter localization using Unmanned Arial Vehicles (UAVs) attracts much attention for its simplicity and efficiency. However, the RSS-based CS approach is vulnerable to the noise in a practical scenario. To mitigate this, we propose a robust localization framework for multiple emitters in UAV-based Wireless Sensor Network (WSN). We first approximate the lognormal noise's influence on the dictionary by a two-layer hierarchical prior model. Then, by exploiting multi-frequency measurements, the multi-emitter localization is transformed into the joint estimation for multiple sparse vectors and noise level. Finally, the joint estimation problem is solved by a Concurrent Variational Bayesian Inference (CVBI) algorithm, where an adaptive grid pruning mechanism is designed. The merits of the proposed framework are testified by numerical simulations.
机译:将压缩感(CS)应用于使用无人驾驶车辆(UAV)的基于信号强度(RSS)的多发射器本地化,吸引了其简单性和效率的大量关注。 但是,基于RSS的CS方法容易受到实际情况的噪声。 为了缓解这一点,我们为无人机的无线传感器网络(WSN)中的多个发射器提出了一种强大的本地化框架。 我们首先通过双层分层先前模型近似于逻辑正态噪声对字典的影响。 然后,通过利用多频测量,多发射器定位被转换为多个稀疏向量和噪声水平的联合估计。 最后,通过并发变分贝叶斯推断(CVBI)算法来解决联合估计问题,其中设计自适应网格修剪机构。 所提出的框架的优点是通过数值模拟作证。

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