English

D$^3$Fields: Dynamic 3D Descriptor Fields for Zero-Shot Generalizable Rearrangement

Robotics 2024-10-18 v3 Computer Vision and Pattern Recognition Machine Learning

Abstract

Scene representation is a crucial design choice in robotic manipulation systems. An ideal representation is expected to be 3D, dynamic, and semantic to meet the demands of diverse manipulation tasks. However, previous works often lack all three properties simultaneously. In this work, we introduce D3^3Fields -- dynamic 3D descriptor fields. These fields are implicit 3D representations that take in 3D points and output semantic features and instance masks. They can also capture the dynamics of the underlying 3D environments. Specifically, we project arbitrary 3D points in the workspace onto multi-view 2D visual observations and interpolate features derived from visual foundational models. The resulting fused descriptor fields allow for flexible goal specifications using 2D images with varied contexts, styles, and instances. To evaluate the effectiveness of these descriptor fields, we apply our representation to rearrangement tasks in a zero-shot manner. Through extensive evaluation in real worlds and simulations, we demonstrate that D3^3Fields are effective for zero-shot generalizable rearrangement tasks. We also compare D3^3Fields with state-of-the-art implicit 3D representations and show significant improvements in effectiveness and efficiency.

Keywords

Cite

@article{arxiv.2309.16118,
  title  = {D$^3$Fields: Dynamic 3D Descriptor Fields for Zero-Shot Generalizable Rearrangement},
  author = {Yixuan Wang and Mingtong Zhang and Zhuoran Li and Tarik Kelestemur and Katherine Driggs-Campbell and Jiajun Wu and Li Fei-Fei and Yunzhu Li},
  journal= {arXiv preprint arXiv:2309.16118},
  year   = {2024}
}

Comments

Accepted to Conference on Robot Learning (CoRL 2024) as Oral Presentation. The first three authors contributed equally. Project Page: https://robopil.github.io/d3fields/

R2 v1 2026-06-28T12:34:29.328Z