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Learning to Drive in a Day

机译:学会在一天中开车

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摘要

We demonstrate the first application of deep reinforcement learning to autonomous driving. From randomly initialised parameters, our model is able to learn a policy for lane following in a handful of training episodes using a single monocular image as input. We provide a general and easy to obtain reward: the distance travelled by the vehicle without the safety driver taking control. We use a continuous, model-free deep reinforcement learning algorithm, with all exploration and optimisation performed on-vehicle. This demonstrates a new framework for autonomous driving which moves away from reliance on defined logical rules, mapping, and direct supervision. We discuss the challenges and opportunities to scale this approach to a broader range of autonomous driving tasks.
机译:我们展示了深增强学习到自动驾驶的第一次应用。从随机初始化的参数来看,我们的模型能够在少数训练剧中使用单眼图像作为输入来学习课程的策略。我们提供一般且易于获得的奖励:车辆行驶的距离而没有安全驱动器控制。我们使用连续的无模型深度加强学习算法,所有探索和优化都在车上进行。这证明了一种自动驾驶的新框架,它远离依赖于定义的逻辑规则,映射和直接监督。我们讨论将这种方法扩展到更广泛的自主驾驶任务方面的挑战和机会。

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