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首页> 外文期刊>Intelligent Transport Systems, IET >Gauss mixture hidden Markov model to characterise and model discretionary lane-change behaviours for autonomous vehicles
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Gauss mixture hidden Markov model to characterise and model discretionary lane-change behaviours for autonomous vehicles

机译:高斯混合隐马尔可夫模型,以特征为特征和模型自主车道改变自主车辆的行为

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摘要

To solve the unacceptable issue caused by the inconsistency of lane-changing behaviour between autonomous vehicles and actual drivers. A lane-changing behaviour decision-making model based on the Gauss mixture hidden Markov model (GM-HMM) is proposed according to the characteristic of a driver's lane changing behaviour. The proposed model is tested and verified based on the database of Next-Generation Simulation (NGSIM). The results show that the GM-HMM is 95.4% similar to the real driver's behaviour. To further verify the proposed model, the proposed algorithm is compared with some machine learning techniques from literature in different test scenarios. The comparison and analysis indicate that the GM-HMM method can more accurately simulate the real driver's lane-change behaviour, thus improving the trust of the passengers and other vehicles around autonomous vehicles.
机译:解决自动车辆与实际驱动程序之间的车道变化行为不一致引起的不可接受的问题。根据驾驶员车道改变行为的特征,提出了一种基于高斯混合隐马尔可夫模型(GM-HMM)的车道改变行为决策模型。基于下一代仿真数据库(NGSIM)进行测试和验证所提出的模型。结果表明,GM-HMM与真正的驾驶员行为相似95.4%。为了进一步验证所提出的模型,将所提出的算法与来自不同测试场景中的文献中的一些机器学习技术进行比较。比较和分析表明,GM-HMM方法可以更准确地模拟真正的驾驶员的车道变化行为,从而改善自动车辆周围的乘客和其他车辆的信任。

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