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Decision Assist for Self-driving Cars

机译:决策协助自驾车

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Research into self-driving cars has grown enormously in the last decade primarily due to the advances in the fields of machine intelligence and image processing. An under-appreciated aspect of self-driving cars is actively avoiding high traffic zones, low visibility zones, and routes with rough weather conditions by learning different conditions and making decisions based on trained experiences. This paper addresses this challenge by introducing a novel hierarchical structure for dynamic path planning and experiential learning for vehicles. A multistage system is proposed for detecting and compensating for weather, lighting, and traffic conditions as well as a novel adaptive path planning algorithm named Checked State A3C. This algorithm improves upon the existing A3C Reinforcement Learning (RL) algorithm by adding state memory which provides the ability to learn an adaptive model of the best decisions to take from experience.
机译:在过去的十年中,在过去的十年中,自动驾驶汽车的研究主要是由于机器智能和图像处理领域的进步。通过学习不同的条件并根据训练经验做出决定,自驾驾驶汽车的未受高度的交通区,低可见区域和具有粗糙天气状况的路线。本文通过为车辆的动态路径规划和体验学习引入新颖的层次结构来解决这一挑战。提出了一种多级系统,用于检测和补偿天气,照明和交通状况以及名为Checked State A3C的新型自适应路径规划算法。该算法通过添加状态存储器来改善现有的A3C加强学习(RL)算法,该算法提供了学习最佳决策的适应性模型的能力。

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