ROAICVLGNEAug 21, 2023

Structured World Models from Human Videos

CMU
arXiv:2308.10901v1168 citationsh-index: 34
Originality Incremental advance
AI Analysis

This addresses the challenge of data-efficient robot learning for manipulation tasks, though it builds on existing ideas from large-scale dataset learning.

The paper tackles the problem of enabling robots to learn complex manipulation skills efficiently in real-world settings by leveraging internet-scale human video data, resulting in robots learning various skills in under 30 minutes of interaction.

We tackle the problem of learning complex, general behaviors directly in the real world. We propose an approach for robots to efficiently learn manipulation skills using only a handful of real-world interaction trajectories from many different settings. Inspired by the success of learning from large-scale datasets in the fields of computer vision and natural language, our belief is that in order to efficiently learn, a robot must be able to leverage internet-scale, human video data. Humans interact with the world in many interesting ways, which can allow a robot to not only build an understanding of useful actions and affordances but also how these actions affect the world for manipulation. Our approach builds a structured, human-centric action space grounded in visual affordances learned from human videos. Further, we train a world model on human videos and fine-tune on a small amount of robot interaction data without any task supervision. We show that this approach of affordance-space world models enables different robots to learn various manipulation skills in complex settings, in under 30 minutes of interaction. Videos can be found at https://human-world-model.github.io

Foundations

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