2022
DOI: 10.48550/arxiv.2205.13817
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Isolating and Leveraging Controllable and Noncontrollable Visual Dynamics in World Models

Abstract: World models learn the consequences of actions in vision-based interactive systems. However, in practical scenarios such as autonomous driving, there commonly exists noncontrollable dynamics independent of the action signals, making it difficult to learn effective world models. To tackle this problem, we present a novel reinforcement learning approach named Iso-Dream, which improves the Dream-to-Control framework [22] in two aspects. First, by optimizing the inverse dynamics, we encourage the world model to le… Show more

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