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Learning Reusable Manipulation Strategies

About

Humans demonstrate an impressive ability to acquire and generalize manipulation "tricks." Even from a single demonstration, such as using soup ladles to reach for distant objects, we can apply this skill to new scenarios involving different object positions, sizes, and categories (e.g., forks and hammers). Additionally, we can flexibly combine various skills to devise long-term plans. In this paper, we present a framework that enables machines to acquire such manipulation skills, referred to as "mechanisms," through a single demonstration and self-play. Our key insight lies in interpreting each demonstration as a sequence of changes in robot-object and object-object contact modes, which provides a scaffold for learning detailed samplers for continuous parameters. These learned mechanisms and samplers can be seamlessly integrated into standard task and motion planners, enabling their compositional use.

Jiayuan Mao, Joshua B. Tenenbaum, Tom\'as Lozano-P\'erez, Leslie Pack Kaelbling• 2023

Related benchmarks

TaskDatasetResultRank
Bimanual ManipulationBimanual Manipulation Tasks new placements + same objects
Plug/Pen Success Rate44
12
Bimanual ManipulationBimanual Manipulation Tasks new placements + novel instances
Plugging Success Rate24
12
Long-horizon multi-stage robotic manipulationLong-horizon multi-stage tasks (new placements + same objects)
Success Rate (Reorient + Unscrew)20
12
Long-horizon multi-stage robotic manipulationLong-horizon multi-stage tasks new placements + novel instances
Reorient + Unscrew Success Count1
12
Bimanual ManipulationBimanual Manipulation Tasks new placements + novel instances (Out-Of-Distribution (OOD) test)
Plugging Success Rate (OOD)0.00e+0
6
Bimanual ManipulationBimanual Manipulation Tasks new placements + same objects In-Distribution (ID) (test)
PlugPen Success Rate5
6
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