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Autori principali: Yun, Youngsik, Bae, Jeongmin, Son, Hyunseung, Kim, Seoha, Lee, Hahyun, Bang, Gun, Uh, Youngjung
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2505.01235
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author Yun, Youngsik
Bae, Jeongmin
Son, Hyunseung
Kim, Seoha
Lee, Hahyun
Bang, Gun
Uh, Youngjung
author_facet Yun, Youngsik
Bae, Jeongmin
Son, Hyunseung
Kim, Seoha
Lee, Hahyun
Bang, Gun
Uh, Youngjung
contents Online reconstruction of dynamic scenes is significant as it enables learning scenes from live-streaming video inputs, while existing offline dynamic reconstruction methods rely on recorded video inputs. However, previous online reconstruction approaches have primarily focused on efficiency and rendering quality, overlooking the temporal consistency of their results, which often contain noticeable artifacts in static regions. This paper identifies that errors such as noise in real-world recordings affect temporal inconsistency in online reconstruction. We propose a method that enhances temporal consistency in online reconstruction from observations with temporal inconsistency which is inevitable in cameras. We show that our method restores the ideal observation by subtracting the learned error. We demonstrate that applying our method to various baselines significantly enhances both temporal consistency and rendering quality across datasets. Code, video results, and checkpoints are available at https://bbangsik13.github.io/OR2.
format Preprint
id arxiv_https___arxiv_org_abs_2505_01235
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Compensating Spatiotemporally Inconsistent Observations for Online Dynamic 3D Gaussian Splatting
Yun, Youngsik
Bae, Jeongmin
Son, Hyunseung
Kim, Seoha
Lee, Hahyun
Bang, Gun
Uh, Youngjung
Computer Vision and Pattern Recognition
Online reconstruction of dynamic scenes is significant as it enables learning scenes from live-streaming video inputs, while existing offline dynamic reconstruction methods rely on recorded video inputs. However, previous online reconstruction approaches have primarily focused on efficiency and rendering quality, overlooking the temporal consistency of their results, which often contain noticeable artifacts in static regions. This paper identifies that errors such as noise in real-world recordings affect temporal inconsistency in online reconstruction. We propose a method that enhances temporal consistency in online reconstruction from observations with temporal inconsistency which is inevitable in cameras. We show that our method restores the ideal observation by subtracting the learned error. We demonstrate that applying our method to various baselines significantly enhances both temporal consistency and rendering quality across datasets. Code, video results, and checkpoints are available at https://bbangsik13.github.io/OR2.
title Compensating Spatiotemporally Inconsistent Observations for Online Dynamic 3D Gaussian Splatting
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2505.01235