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Neural network-based solution for heterogeneous radar track fusion

机译:基于神经网络的异构雷达航迹融合解决方案

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Abstract: This paper presents an original neural network based solution to the heterogeneous radar track fusion problem. The neural network is used to decide which tracks issued from two distinct sensors correspond to the same target. Classical fusion methods, based on distance criteria or the Chi-square test, can only be used when the sensors are of the same type, i.e. when they provide the same type of information, and the measurement vector is of the same dimension. When that is not the case, these criteria are applied only on the information that are common to the sensors, resulting in a lost of informations. Our neural approach, based on the use of a Kohonen map, allows to compare heterogenous tracks, without such a lost of informations. A neural network associated with a given sensor, maps each track on a two dimensional Kohonen grid. Each neuron encodes a monosensor track; the neuron inputs are defined as the latest estimated positions of the track. At convergence, the fusion of two tracks is decided depending on the position of each monosensor track on the grids: the best matching of two neural maps is defined in such a way that the distance between two projected tracks (of two different sensors) is minimized. This matching problem is similar to the well-known assignment problem which can also be solved by means of a neural network. Some simulation results are presented, using two dimensional and three dimensional radar tracks. !17
机译:摘要:本文提出了一种基于原始神经网络的异构雷达航迹融合问题解决方案。神经网络用于确定从两个不同的传感器发出的轨迹对应于同一目标。基于距离标准或卡方检验的经典融合方法只能在传感器属于相同类型时使用,即当传感器提供相同类型的信息并且测量向量具有相同尺寸时。如果不是这种情况,则仅将这些标准应用于传感器共有的信息,从而导致信息丢失。我们的神经方法基于Kohonen映射的使用,可以比较异构轨迹,而不会丢失任何信息。与给定传感器关联的神经网络将每个轨迹映射到二维Kohonen网格上。每个神经元编码一个单传感器轨迹;神经元输入定义为轨迹的最新估计位置。收敛时,取决于网格上每个单传感器轨迹的位置来决定两条轨迹的融合:定义两个神经图的最佳匹配,以使(两个不同传感器的)两个投影轨迹之间的距离最小化。该匹配问题类似于也可以通过神经网络解决的众所周知的分配问题。提出了一些使用二维和三维雷达轨迹的仿真结果。 !17

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