ROAINov 27, 2024

GAPartManip: A Large-scale Part-centric Dataset for Material-Agnostic Articulated Object Manipulation

Berkeley
arXiv:2411.18276v28 citationsh-index: 20ICRA
Originality Incremental advance
AI Analysis

This work addresses the problem of flexible and adaptable manipulation of articulated objects for embodied AI applications, representing an incremental advancement through dataset creation and integration with existing methods.

The authors tackled the challenge of manipulating articulated objects in real-world environments by introducing a large-scale part-centric dataset with material randomization and detailed part-oriented annotations, which significantly improved depth perception and interaction pose prediction performance in both simulation and real-world scenarios.

Effectively manipulating articulated objects in household scenarios is a crucial step toward achieving general embodied artificial intelligence. Mainstream research in 3D vision has primarily focused on manipulation through depth perception and pose detection. However, in real-world environments, these methods often face challenges due to imperfect depth perception, such as with transparent lids and reflective handles. Moreover, they generally lack the diversity in part-based interactions required for flexible and adaptable manipulation. To address these challenges, we introduced a large-scale part-centric dataset for articulated object manipulation that features both photo-realistic material randomization and detailed annotations of part-oriented, scene-level actionable interaction poses. We evaluated the effectiveness of our dataset by integrating it with several state-of-the-art methods for depth estimation and interaction pose prediction. Additionally, we proposed a novel modular framework that delivers superior and robust performance for generalizable articulated object manipulation. Our extensive experiments demonstrate that our dataset significantly improves the performance of depth perception and actionable interaction pose prediction in both simulation and real-world scenarios. More information and demos can be found at: https://pku-epic.github.io/GAPartManip/.

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