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Automatically Generated Curriculum based Reinforcement Learning for Autonomous Vehicles in Urban Environment

机译:自动生成的基于课程的城市环境中自动驾驶车辆的强化学习

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We address the problem of learning autonomous driving behaviors in urban intersections using deep reinforcement learning (DRL). DRL has become a popular choice for creating autonomous agents due to its success in various tasks. However, as the problems tackled become more complex, the number of training iterations necessary increase drastically. Curriculum learning has been shown to reduce the required training time and improve the performance of the agent, but creating an optimal curriculum often requires human handcrafting. In this work, we learn a policy for urban intersection crossing using DRL and introduce a method to automatically generate the curriculum for the training process from a candidate set of tasks. We compare the performance of the automatically generated curriculum (AGC) training to those of randomly generated sequences and show that AGC can significantly reduce the training time while achieving similar or better performance.
机译:我们解决了利用深增强学习(DRL)学习城市交叉路口自主驾驶行为的问题。由于其在各种任务中的成功,DRL已成为创建自治代理的热门选择。然而,由于问题变得更加复杂,因此培训迭代的数量急剧增加。课程学习已被证明可以减少所需的培训时间并提高代理的性能,但创造了最佳课程通常需要人类的手工程。在这项工作中,我们学习使用DRL的城市交叉路口的政策,并引入一种从候选任务集自动生成培训过程课程的方法。我们将自动生成的课程(AGC)培训的性能进行比较对随机生成的序列的性能,并显示AGC可以显着降低培训时间,同时实现类似或更好的性能。

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