朱小勇, 陈胜. 基于ResNet-ViT的海战多目标态势感知[J]. 信息与控制, 2023, 52(5): 638-647. DOI: 10.13976/j.cnki.xk.2023.2473
引用本文: 朱小勇, 陈胜. 基于ResNet-ViT的海战多目标态势感知[J]. 信息与控制, 2023, 52(5): 638-647. DOI: 10.13976/j.cnki.xk.2023.2473
ZHU Xiaoyong, CHEN Sheng. Multi-target Situational Swareness of Naval War Based on ResNet-ViT[J]. INFORMATION AND CONTROL, 2023, 52(5): 638-647. DOI: 10.13976/j.cnki.xk.2023.2473
Citation: ZHU Xiaoyong, CHEN Sheng. Multi-target Situational Swareness of Naval War Based on ResNet-ViT[J]. INFORMATION AND CONTROL, 2023, 52(5): 638-647. DOI: 10.13976/j.cnki.xk.2023.2473

基于ResNet-ViT的海战多目标态势感知

Multi-target Situational Swareness of Naval War Based on ResNet-ViT

  • 摘要: 战场态势意图由一系列战术动机组成,具有时序、动态、多目标等特点。现有的态势感知方法中存在只研究单目标或忽略时序性的问题。在海战多目标、长周期的背景下,针对以上问题,提出了一种基于ResNet-ViT网络的海战综合态势感知模型。其中ResNet (Residual Network)网络用于提取目标之间的空间特征,而ViT (Vision Transformer)网络则利用Transformer能够挖掘长距离依赖的特性来捕获时序特征。结果表明:模型能以92%~95%的准确率(预测正确的样本的数量与总样本数量的比例)预测海战意图,解决了长周期下多目标协同作战的意图预测问题。

     

    Abstract: Battlefield situation intent consists of a series of tactical motivations, which are time series, dynamic and multi-objective. However, the existing situational awareness methods have the problem of only studying single objectives or ignoring time series. Based on the characteristics of the multiple-objective and long period in the background of naval warfare, a comprehensive situational awareness model of naval warfare based on the ResNet-ViT network is presented. The residual neural network (ResNet) extracts spatial features between targets, whereas the vision transformer (ViT) network captures time-series features by using the transformer's ability to mine long-distance dependency features. The experimental results show that the proposed model can predict the intent of naval warfare with 92%~95% accuracy (proportion of correctly predicted samples to total samples), which solves the intention prediction problem of multi-target cooperative warfare over a long period.

     

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