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Visual Foresight With a Local Dynamics Model

2022-06-29 17:58:14
Colin Kohler, Robert Platt

Abstract

Model-free policy learning has been shown to be capable of learning manipulation policies which can solve long-time horizon tasks using single-step manipulation primitives. However, training these policies is a time-consuming process requiring large amounts of data. We propose the Local Dynamics Model (LDM) which efficiently learns the state-transition function for these manipulation primitives. By combining the LDM with model-free policy learning, we can learn policies which can solve complex manipulation tasks using one-step lookahead planning. We show that the LDM is both more sample-efficient and outperforms other model architectures. When combined with planning, we can outperform other model-based and model-free policies on several challenging manipulation tasks in simulation.

Abstract (translated)

URL

https://arxiv.org/abs/2206.14802

PDF

https://arxiv.org/pdf/2206.14802.pdf


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