ROAICVLGFeb 11, 2024

Learning by Watching: A Review of Video-based Learning Approaches for Robot Manipulation

arXiv:2402.07127v323 citationsh-index: 4IEEE Access
Originality Synthesis-oriented
AI Analysis

This is an incremental survey paper summarizing existing work in a nascent domain at the intersection of computer vision, natural language processing, and robot learning.

This survey reviews approaches for robots to learn manipulation skills by watching abundant online videos, addressing the scarcity of diverse datasets in robotics. It analyzes how video-based learning can enhance generalization and sample efficiency compared to standard curated datasets.

Robot learning of manipulation skills is hindered by the scarcity of diverse, unbiased datasets. While curated datasets can help, challenges remain in generalizability and real-world transfer. Meanwhile, large-scale "in-the-wild" video datasets have driven progress in computer vision through self-supervised techniques. Translating this to robotics, recent works have explored learning manipulation skills by passively watching abundant videos sourced online. Showing promising results, such video-based learning paradigms provide scalable supervision while reducing dataset bias. This survey reviews foundations such as video feature representation learning techniques, object affordance understanding, 3D hand/body modeling, and large-scale robot resources, as well as emerging techniques for acquiring robot manipulation skills from uncontrolled video demonstrations. We discuss how learning only from observing large-scale human videos can enhance generalization and sample efficiency for robotic manipulation. The survey summarizes video-based learning approaches, analyses their benefits over standard datasets, survey metrics, and benchmarks, and discusses open challenges and future directions in this nascent domain at the intersection of computer vision, natural language processing, and robot learning.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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