A compressive sensing approach to the fusion of PCL sensors

J. Ender
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引用次数: 19

Abstract

Sensor data fusion techniques have been applied in the recent years to the combination of the information provided by different sensor systems. Passive coherent location (PCL) networks use the illumination by common radio or television transmitters to detect air-targets and estimate their positions and parameters due to the reflected waves. To fuse the information of the bistatic Tx-Rx pairs advanced techniques have been developed based on the detections and parameter estimates obtained at each bistatic pair. In our paper we will consider joined signal processing of the radar raw data based on compressive sensing (CS) techniques using the block-sparsity approach.
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一种PCL传感器融合的压缩感知方法
近年来,传感器数据融合技术已被应用于不同传感器系统提供的信息的组合。无源相干定位(PCL)网络利用普通无线电或电视发射机的照明来探测空中目标,并根据反射波估计其位置和参数。为了融合双基地Tx-Rx对的信息,在每个双基地对的检测和参数估计的基础上发展了先进的技术。在本文中,我们将考虑基于压缩感知(CS)技术的雷达原始数据的联合信号处理。
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