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基于时序特征编码的目标战术意图识别算法?
引用本文:欧微,柳少军,贺筱媛,郭圣明.基于时序特征编码的目标战术意图识别算法?[J].指挥控制与仿真,2016(6):36-41.
作者姓名:欧微  柳少军  贺筱媛  郭圣明
作者单位:1. 国防大学信息作战与指挥训练教研部,北京 100091; 乌鲁木齐民族干部学院,新疆 乌鲁木齐 830002;2. 国防大学信息作战与指挥训练教研部,北京,100091
基金项目:国家自然科学基金(60403401,61374179,61273189,61174156,61174035);全军军事学研究生课题(2015JY035)
摘    要:对战场目标战术意图的快速、准确和自动识别,是智能决策的前提和基础。目标战术意图通常由多个战术动作组合完成,因而目标状态呈现动态、时序变化特征。本文针对目标意图识别问题的特点,提出一种基于栈式自编码器( SAE)的智能识别模型,设计智能识别模型的基本框架,提出一种基于时序特征的输入信号编码方法及相应的模式解析机制,通过将目标状态在多个时刻的时序特征和战场环境、目标属性等信息统一编码为输入信号,将军事专家的知识经验封装为模式标签,模拟人的推理模式与认知经验,实现对目标战术意图的智能识别。最后通过实验,分析预训练过程和网络深度对算法性能的影响,并通过与多层感知机(MLP)和逻辑回归分类器(LRC)识别准确率的比较,验证所提SAE算法的有效性。

关 键 词:意图识别  时序特征  栈式自编码器  深度学习

Tactical Intention Recognition Algorithm Based on Encoded Temporal Features
Abstract:Automatic and fast intention recognition is the premise and bedrock of intelligent decision?making, and it refers to the process of deducing the intention of a target from a set of observed actions with dynamic and temporal characteristics. Here, an automatic tactical intention recognition model based on deep learning methods of stacked auto?encoder ( SAE) is proposed. The temporal features and attributes of corresponding target and battlefield environment are encoded as the input signal, and then the recognition experience of domain expert are encapsulated and labeled as knowledge to train the intelli?gent model so as to simulate the deducing and cognition mode of human. Finally, the influence of pre?training and the depth of the SAE network on the performance are analyzed, and the validation of SAE model was illustrated by comparison of recog?nition accuracy ratios with that obtained by the models based on multi?layer perceptron ( MLP ) and logistic regression classi?fier ( LRC) .
Keywords:tactical intention recognition  temporal features  stacked auto-encoder  deep learning
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