Research on Target Grouping Method Based on Graph Neural Network

Yang Zhang, Peng-fei Peng, Rui Lu
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Abstract

With the application of a large number of battlefield observation sensors, the battlefield target data obtained by the command and control system has shown a surge trend. The scale of target information data is large, problems such as high dimensionality and complex structure have brought new challenges to the target grouping technology. The traditional clustering method has been unable to effectively target grouping in high-dimensional battlefield target data. Aiming at the dilemma of current target grouping technology, in order to help commanders get different types of target groups, this paper constructs a target grouping algorithm based on graph neural network, which combines graph convolutional neural network and clustering algorithm, and uses self-supervised mechanism to optimize the model. Through the verification experiment of the target clustering model on 4 high-dimensional data sets, three clustering effect evaluation indicators are established, and compared with the two methods of K-means and AE+k-means, it proves that our method is more efficient and intelligent.
基于图神经网络的目标分组方法研究
随着战场观测传感器的大量应用,指挥控制系统获取的战场目标数据呈激增趋势。目标信息数据规模大,高维数、结构复杂等问题给目标分组技术带来了新的挑战。传统的聚类方法已经无法有效地对高维战场目标数据进行目标分组。针对当前目标分组技术的困境,为了帮助指挥员获得不同类型的目标分组,本文将图卷积神经网络与聚类算法相结合,构建了一种基于图神经网络的目标分组算法,并利用自监督机制对模型进行优化。通过对目标聚类模型在4个高维数据集上的验证实验,建立了3个聚类效果评价指标,并与K-means和AE+ K-means两种方法进行了比较,证明了我们的方法更加高效和智能。
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