资源论文HIERARCHICAL FORESIGHT:S ELF -S UPERVISED LEARNING OF LONG -H ORIZONTASKS VIA VISUAL SUBGOAL GENERATION

HIERARCHICAL FORESIGHT:S ELF -S UPERVISED LEARNING OF LONG -H ORIZONTASKS VIA VISUAL SUBGOAL GENERATION

2020-01-02 | |  81 |   50 |   0

Abstract

Video prediction models combined with planning algorithms have shown promise in enabling robots to learn to perform many vision-based tasks through only selfsupervision, reaching novel goals in cluttered scenes with unseen objects. However, due to the compounding uncertainty in long horizon video prediction and poor scalability of sampling-based planning optimizers, one significant limitation of these approaches is the ability to plan over long horizons to reach distant goals. To that end, we propose a framework for subgoal generation and planning, hierarchical visual foresight (HVF), which generates subgoal images conditioned on a goal image, and uses them for planning. The subgoal images are directly optimized to decompose the task into easy to plan segments, and as a result, we observe that the method naturally identifies semantically meaningful states as subgoals. Across four simulated vision-based manipulation tasks, we find that our method achieves more than 20% absolute performance improvement over planning without subgoals and model-free RL approaches. Further, our experiments illustrate that our approach extends to real, cluttered visual scenes.

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