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Autori principali: Sun, Yujing, Sun, Caiyi, Liu, Yuan, Ma, Yuexin, Yiu, Siu Ming
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2402.02800
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author Sun, Yujing
Sun, Caiyi
Liu, Yuan
Ma, Yuexin
Yiu, Siu Ming
author_facet Sun, Yujing
Sun, Caiyi
Liu, Yuan
Ma, Yuexin
Yiu, Siu Ming
contents Human has an incredible ability to effortlessly perceive the viewpoint difference between two images containing the same object, even when the viewpoint change is astonishingly vast with no co-visible regions in the images. This remarkable skill, however, has proven to be a challenge for existing camera pose estimation methods, which often fail when faced with large viewpoint differences due to the lack of overlapping local features for matching. In this paper, we aim to effectively harness the power of object priors to accurately determine two-view geometry in the face of extreme viewpoint changes. In our method, we first mathematically transform the relative camera pose estimation problem to an object pose estimation problem. Then, to estimate the object pose, we utilize the object priors learned from a diffusion model Zero123 to synthesize novel-view images of the object. The novel-view images are matched to determine the object pose and thus the two-view camera pose. In experiments, our method has demonstrated extraordinary robustness and resilience to large viewpoint changes, consistently estimating two-view poses with exceptional generalization ability across both synthetic and real-world datasets. Code will be available at https://github.com/scy639/Extreme-Two-View-Geometry-From-Object-Poses-with-Diffusion-Models.
format Preprint
id arxiv_https___arxiv_org_abs_2402_02800
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Extreme Two-View Geometry From Object Poses with Diffusion Models
Sun, Yujing
Sun, Caiyi
Liu, Yuan
Ma, Yuexin
Yiu, Siu Ming
Computer Vision and Pattern Recognition
Human has an incredible ability to effortlessly perceive the viewpoint difference between two images containing the same object, even when the viewpoint change is astonishingly vast with no co-visible regions in the images. This remarkable skill, however, has proven to be a challenge for existing camera pose estimation methods, which often fail when faced with large viewpoint differences due to the lack of overlapping local features for matching. In this paper, we aim to effectively harness the power of object priors to accurately determine two-view geometry in the face of extreme viewpoint changes. In our method, we first mathematically transform the relative camera pose estimation problem to an object pose estimation problem. Then, to estimate the object pose, we utilize the object priors learned from a diffusion model Zero123 to synthesize novel-view images of the object. The novel-view images are matched to determine the object pose and thus the two-view camera pose. In experiments, our method has demonstrated extraordinary robustness and resilience to large viewpoint changes, consistently estimating two-view poses with exceptional generalization ability across both synthetic and real-world datasets. Code will be available at https://github.com/scy639/Extreme-Two-View-Geometry-From-Object-Poses-with-Diffusion-Models.
title Extreme Two-View Geometry From Object Poses with Diffusion Models
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2402.02800