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Main Authors: Winge, Carl, Imdieke, Adam, Aldeeb, Bahaa, Kang, Dongyeop, Desingh, Karthik
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.12509
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author Winge, Carl
Imdieke, Adam
Aldeeb, Bahaa
Kang, Dongyeop
Desingh, Karthik
author_facet Winge, Carl
Imdieke, Adam
Aldeeb, Bahaa
Kang, Dongyeop
Desingh, Karthik
contents Training generalist robot agents is an immensely difficult feat due to the requirement to perform a huge range of tasks in many different environments. We propose selectively training robots based on end-user preferences instead. Given a factory model that lets an end user instruct a robot to perform lower-level actions (e.g. 'Move left'), we show that end users can collect demonstrations using language to train their home model for higher-level tasks specific to their needs (e.g. 'Open the top drawer and put the block inside'). We demonstrate this hierarchical robot learning framework on robot manipulation tasks using RLBench environments. Our method results in a 16% improvement in skill success rates compared to a baseline method. In further experiments, we explore the use of the large vision-language model (VLM), Bard, to automatically break down tasks into sequences of lower-level instructions, aiming to bypass end-user involvement. The VLM is unable to break tasks down to our lowest level, but does achieve good results breaking high-level tasks into mid-level skills. We have a supplemental video and additional results at talk-through-it.github.io.
format Preprint
id arxiv_https___arxiv_org_abs_2402_12509
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Talk Through It: End User Directed Manipulation Learning
Winge, Carl
Imdieke, Adam
Aldeeb, Bahaa
Kang, Dongyeop
Desingh, Karthik
Robotics
Training generalist robot agents is an immensely difficult feat due to the requirement to perform a huge range of tasks in many different environments. We propose selectively training robots based on end-user preferences instead. Given a factory model that lets an end user instruct a robot to perform lower-level actions (e.g. 'Move left'), we show that end users can collect demonstrations using language to train their home model for higher-level tasks specific to their needs (e.g. 'Open the top drawer and put the block inside'). We demonstrate this hierarchical robot learning framework on robot manipulation tasks using RLBench environments. Our method results in a 16% improvement in skill success rates compared to a baseline method. In further experiments, we explore the use of the large vision-language model (VLM), Bard, to automatically break down tasks into sequences of lower-level instructions, aiming to bypass end-user involvement. The VLM is unable to break tasks down to our lowest level, but does achieve good results breaking high-level tasks into mid-level skills. We have a supplemental video and additional results at talk-through-it.github.io.
title Talk Through It: End User Directed Manipulation Learning
topic Robotics
url https://arxiv.org/abs/2402.12509