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Towards artificial situation awareness by autonomous vehicles * * Research in part supported by the EPSRC, grant numbers EP/L024942/1 and EP/J011843/1

机译:致力于实现自动驾驶汽车对人为态势的意识 * * 由EPSRC支持的部分研究,授予号EP / L024942 / 1和EP / J011843 / 1

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This paper presents a novel approach to artificial situation awareness for an autonomous vehicle operating in complex dynamic environments populated by other agents. A key aspect of situation awareness is the use of mental models to predict future states of the environment, allowing safe and rational routing decisions to be made. We present a technique for predicting future discrete state transitions (such as the commencement of a turn) by other agents, based upon an uncertain mental model. Predictions take the form of univariate Gaussian Probability Density Functions which capture the inherent uncertainty in transition time whilst still providing great benefit to a decision making system. The prediction distributions are compared with Monte Carlo simulations and show an excellent correlation over long prediction horizons.
机译:本文提出了一种新的方法,用于在由其他代理人组成的复杂动态环境中运行的自动驾驶汽车的人工情况感知。态势感知的关键方面是使用心理模型来预测环境的未来状态,从而可以做出安全合理的路由决策。我们提出了一种基于不确定的心理模型来预测其他特工未来的离散状态转换(例如转弯开始)的技术。预测采用单变量高斯概率密度函数的形式,该函数捕获过渡时间中固有的不确定性,同时仍为决策系统带来巨大好处。将该预测分布与蒙特卡洛模拟进行了比较,并在较长的预测范围内显示出极好的相关性。

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