Articulated Object Estimation in the Wild

Published: 08 Aug 2025, Last Modified: 16 Sept 2025CoRL 2025 PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Articulated Object Estimation, 3D Scene Understanding, Interactive Perception
TL;DR: We propose a novel method that estimates the motion model of articulated objects using point trajectories under partial or imperfect views of target objects given ego-centric RGB-D videos that we publish as the Arti4D dataset.
Abstract: Understanding the 3D motion of articulated objects is essential in robotic scene understanding, mobile manipulation, and motion planning. Prior methods for articulation estimation have primarily focused on controlled settings, assuming either fixed camera viewpoints or direct observations of various object states, which tend to fail in more realistic, unconstrained environments. In contrast, humans effortlessly infer articulation modes by watching others manipulating objects. Inspired by this, we introduce ArtiPoint, a novel estimation framework capable of inferring articulated object models under dynamic camera motion and partial observability. By combining deep point tracking with a factor graph optimization framework, ArtiPoint robustly estimates articulated part trajectories and articulation axes directly from raw RGB-D videos. To foster future research in this domain, we introduce Arti4D, the first ego-centric in-the-wild dataset capturing articulated object interactions at a scene level, accompanied with articulation labels and ground truth camera poses. We benchmark ArtiPoint against a range of classical and modern deep learning baselines, demonstrating its superior performance on Arti4D. We make our code and Arti4D publicly available at redacted-for-review.
Supplementary Material: pdf
Spotlight: zip
Submission Number: 792
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