Free-Moving Object Reconstruction and Pose Estimation with Virtual Camera

2
citations
#1456
in AAAI 2025
of 3028 papers
6
Top Authors
3
Data Points

Abstract

We propose an approach for reconstructing free-moving object from a monocular RGB video. Most existing methods either assume scene prior, hand pose prior, object category pose prior, or rely on local optimization with multiple sequence segments. We propose a method that allows free interaction with the object in front of a moving camera without relying on any prior, and optimizes the sequence globally without any segments. We progressively optimize the object shape and pose simultaneously based on an implicit neural representation. A key aspect of our method is a virtual camera system that reduces the search space of the optimization significantly. We evaluate our method on the standard HO3D dataset and a collection of egocentric RGB sequences captured with a head-mounted device. We demonstrate that our approach outperforms most methods significantly, and is on par with recent techniques that assume prior information.

Citation History

Jan 28, 2026
0
Feb 13, 2026
2+2
Feb 13, 2026
2