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Hauptverfasser: Chen, Zeren, Shi, Zhelun, Lu, Xiaoya, He, Lehan, Qian, Sucheng, Yin, Zhenfei, Ouyang, Wanli, Shao, Jing, Qiao, Yu, Lu, Cewu, Sheng, Lu
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2403.19622
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author Chen, Zeren
Shi, Zhelun
Lu, Xiaoya
He, Lehan
Qian, Sucheng
Yin, Zhenfei
Ouyang, Wanli
Shao, Jing
Qiao, Yu
Lu, Cewu
Sheng, Lu
author_facet Chen, Zeren
Shi, Zhelun
Lu, Xiaoya
He, Lehan
Qian, Sucheng
Yin, Zhenfei
Ouyang, Wanli
Shao, Jing
Qiao, Yu
Lu, Cewu
Sheng, Lu
contents Achieving generalizability in solving out-of-distribution tasks is one of the ultimate goals of learning robotic manipulation. Recent progress of Vision-Language Models (VLMs) has shown that VLM-based task planners can alleviate the difficulty of solving novel tasks, by decomposing the compounded tasks as a plan of sequentially executing primitive-level skills that have been already mastered. It is also promising for robotic manipulation to adapt such composable generalization ability, in the form of composable generalization agents (CGAs). However, the community lacks of reliable design of primitive skills and a sufficient amount of primitive-level data annotations. Therefore, we propose RH20T-P, a primitive-level robotic manipulation dataset, which contains about 38k video clips covering 67 diverse manipulation tasks in real-world scenarios. Each clip is manually annotated according to a set of meticulously designed primitive skills that are common in robotic manipulation. Furthermore, we standardize a plan-execute CGA paradigm and implement an exemplar baseline called RA-P on our RH20T-P, whose positive performance on solving unseen tasks validates that the proposed dataset can offer composable generalization ability to robotic manipulation agents.
format Preprint
id arxiv_https___arxiv_org_abs_2403_19622
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle RH20T-P: A Primitive-Level Robotic Dataset Towards Composable Generalization Agents
Chen, Zeren
Shi, Zhelun
Lu, Xiaoya
He, Lehan
Qian, Sucheng
Yin, Zhenfei
Ouyang, Wanli
Shao, Jing
Qiao, Yu
Lu, Cewu
Sheng, Lu
Robotics
Computer Vision and Pattern Recognition
Achieving generalizability in solving out-of-distribution tasks is one of the ultimate goals of learning robotic manipulation. Recent progress of Vision-Language Models (VLMs) has shown that VLM-based task planners can alleviate the difficulty of solving novel tasks, by decomposing the compounded tasks as a plan of sequentially executing primitive-level skills that have been already mastered. It is also promising for robotic manipulation to adapt such composable generalization ability, in the form of composable generalization agents (CGAs). However, the community lacks of reliable design of primitive skills and a sufficient amount of primitive-level data annotations. Therefore, we propose RH20T-P, a primitive-level robotic manipulation dataset, which contains about 38k video clips covering 67 diverse manipulation tasks in real-world scenarios. Each clip is manually annotated according to a set of meticulously designed primitive skills that are common in robotic manipulation. Furthermore, we standardize a plan-execute CGA paradigm and implement an exemplar baseline called RA-P on our RH20T-P, whose positive performance on solving unseen tasks validates that the proposed dataset can offer composable generalization ability to robotic manipulation agents.
title RH20T-P: A Primitive-Level Robotic Dataset Towards Composable Generalization Agents
topic Robotics
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2403.19622