Hostile intent identification by movement pattern analysis: Using artificial neural networks

Souham Biswas, M. Nene
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Abstract

In the recent years, the problem of identifying suspicious behavior has gained importance and identifying this behavior using computational systems and autonomous algorithms is highly desirable in a tactical scenario. So far, the solutions have been primarily manual which elicit human observation of entities to discern the hostility of the situation. To cater to this problem statement, a number of fully automated and partially automated solutions exist. But, these solutions lack the capability of learning from experiences and work in conjunction with human supervision which is extremely prone to error. In this paper, a generalized methodology to predict the hostility of a given object based on its movement patterns is proposed which has the ability to learn and is based upon the mechanism of humans of “learning from experiences”. The methodology so proposed has been implemented in a computer simulation. The results show that the posited methodology has the potential to be applied in real world tactical scenarios.
基于运动模式分析的敌对意图识别:利用人工神经网络
近年来,识别可疑行为的问题变得越来越重要,在战术场景中,使用计算系统和自主算法识别这种行为是非常可取的。到目前为止,解决方案主要是手动的,它引起人类对实体的观察,以辨别情况的敌意。为了迎合这个问题陈述,存在许多完全自动化和部分自动化的解决方案。但是,这些解决方案缺乏从经验中学习的能力和与人类监督相结合的能力,极易出错。本文提出了一种基于人类“从经验中学习”机制的、具有学习能力的、基于物体运动模式预测其敌意的广义方法。所提出的方法已在计算机仿真中实现。结果表明,假设的方法具有应用于现实世界战术场景的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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