High speed obstacle avoidance using monocular vision and reinforcement learning

ICML '05 Proceedings of the 22nd international conference on Machine learning(2005)

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摘要
We consider the task of driving a remote control car at high speeds through unstructured outdoor environments. We present an approach in which supervised learning is first used to estimate depths from single monocular images. The learning algorithm can be trained either on real camera images labeled with ground-truth distances to the closest obstacles, or on a training set consisting of synthetic graphics images. The resulting algorithm is able to learn monocular vision cues that accurately estimate the relative depths of obstacles in a scene. Reinforcement learning/policy search is then applied within a simulator that renders synthetic scenes. This learns a control policy that selects a steering direction as a function of the vision system's output. We present results evaluating the predictive ability of the algorithm both on held out test data, and in actual autonomous driving experiments.
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关键词
high speed obstacle avoidance,single monocular image,present result,policy search,resulting algorithm,synthetic graphics image,control policy,remote control car,actual autonomous driving experiment,reinforcement learning,monocular vision cue,obstacle avoidance,supervised learning,monocular vision,ground truth
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