Saved in:
Bibliographic Details
Main Authors: Li, Samuel, Kachana, Pujith, Chidananda, Prajwal, Nair, Saurabh, Furukawa, Yasutaka, Brown, Matthew
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.02265
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866916774746783744
author Li, Samuel
Kachana, Pujith
Chidananda, Prajwal
Nair, Saurabh
Furukawa, Yasutaka
Brown, Matthew
author_facet Li, Samuel
Kachana, Pujith
Chidananda, Prajwal
Nair, Saurabh
Furukawa, Yasutaka
Brown, Matthew
contents Estimating agent pose and 3D scene structure from multi-camera rigs is a central task in embodied AI applications such as autonomous driving. Recent learned approaches such as DUSt3R have shown impressive performance in multiview settings. However, these models treat images as unstructured collections, limiting effectiveness in scenarios where frames are captured from synchronized rigs with known or inferable structure. To this end, we introduce Rig3R, a generalization of prior multiview reconstruction models that incorporates rig structure when available, and learns to infer it when not. Rig3R conditions on optional rig metadata including camera ID, time, and rig poses to develop a rig-aware latent space that remains robust to missing information. It jointly predicts pointmaps and two types of raymaps: a pose raymap relative to a global frame, and a rig raymap relative to a rig-centric frame consistent across time. Rig raymaps allow the model to infer rig structure directly from input images when metadata is missing. Rig3R achieves state-of-the-art performance in 3D reconstruction, camera pose estimation, and rig discovery, outperforming both traditional and learned methods by 17-45% mAA across diverse real-world rig datasets, all in a single forward pass without post-processing or iterative refinement.
format Preprint
id arxiv_https___arxiv_org_abs_2506_02265
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Rig3R: Rig-Aware Conditioning for Learned 3D Reconstruction
Li, Samuel
Kachana, Pujith
Chidananda, Prajwal
Nair, Saurabh
Furukawa, Yasutaka
Brown, Matthew
Computer Vision and Pattern Recognition
Estimating agent pose and 3D scene structure from multi-camera rigs is a central task in embodied AI applications such as autonomous driving. Recent learned approaches such as DUSt3R have shown impressive performance in multiview settings. However, these models treat images as unstructured collections, limiting effectiveness in scenarios where frames are captured from synchronized rigs with known or inferable structure. To this end, we introduce Rig3R, a generalization of prior multiview reconstruction models that incorporates rig structure when available, and learns to infer it when not. Rig3R conditions on optional rig metadata including camera ID, time, and rig poses to develop a rig-aware latent space that remains robust to missing information. It jointly predicts pointmaps and two types of raymaps: a pose raymap relative to a global frame, and a rig raymap relative to a rig-centric frame consistent across time. Rig raymaps allow the model to infer rig structure directly from input images when metadata is missing. Rig3R achieves state-of-the-art performance in 3D reconstruction, camera pose estimation, and rig discovery, outperforming both traditional and learned methods by 17-45% mAA across diverse real-world rig datasets, all in a single forward pass without post-processing or iterative refinement.
title Rig3R: Rig-Aware Conditioning for Learned 3D Reconstruction
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2506.02265