2021
DOI: 10.1155/2021/9945044
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End‐to‐End Autonomous Exploration with Deep Reinforcement Learning and Intrinsic Motivation

Abstract: Developing artificial intelligence (AI) agents is challenging for efficient exploration in visually rich and complex environments. In this study, we formulate the exploration question as a reinforcement learning problem and rely on intrinsic motivation to guide exploration behavior. Such intrinsic motivation is driven by curiosity and is calculated based on episode memory. To distribute the intrinsic motivation, we use a count-based method and temporal distance to generate it synchronously. We tested our appro… Show more

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