Cloud-Based Hierarchical Imitation Learning for Scalable Transfer of Construction Skills from Human Workers to Assisting Robots
Hongrui Yu, Vineet R. Kamat, Carol C. Menassa

TL;DR
This paper introduces a cloud-based hierarchical imitation learning framework that enables scalable transfer of construction skills from humans to robots, reducing physical strain on workers and improving adaptability in unstructured environments.
Contribution
It proposes a virtual demonstration platform combined with hierarchical imitation learning to efficiently transfer construction skills without repetitive physical demonstrations.
Findings
Reduces need for physical demonstrations by digitalizing skill transfer.
Employs federated demonstration collection for reusability.
Enhances robot adaptability with deep generative models.
Abstract
Assigning repetitive and physically-demanding construction tasks to robots can alleviate human workers's exposure to occupational injuries. Transferring necessary dexterous and adaptive artisanal construction craft skills from workers to robots is crucial for the successful delegation of construction tasks and achieving high-quality robot-constructed work. Predefined motion planning scripts tend to generate rigid and collision-prone robotic behaviors in unstructured construction site environments. In contrast, Imitation Learning (IL) offers a more robust and flexible skill transfer scheme. However, the majority of IL algorithms rely on human workers to repeatedly demonstrate task performance at full scale, which can be counterproductive and infeasible in the case of construction work. To address this concern, this paper proposes an immersive, cloud robotics-based virtual demonstration…
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Taxonomy
TopicsInnovations in Concrete and Construction Materials · BIM and Construction Integration · 3D Surveying and Cultural Heritage
