2022
DOI: 10.48550/arxiv.2202.10002
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Vision-based Autonomous Driving for Unstructured Environments Using Imitation Learning

Abstract: Unstructured environments are difficult for autonomous driving. This is because various unknown obstacles are lied in drivable space without lanes, and its width and curvature change widely. In such complex environments, searching for a path in real-time is difficult. Also, inaccurate localization data reduce the path tracking accuracy, increasing the risk of collision. Instead of searching and tracking the path, an alternative approach has been proposed that reactively avoids obstacles in real-time. Some meth… Show more

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