Scalable Benchmarking and Robust Learning for Noise-Free Ego-Motion and 3D Reconstruction from Noisy Video
Xiaohao Xu, Tianyi Zhang, Shibo Zhao, Xiang Li, Sibo Wang, Yongqi, Chen, Ye Li, Bhiksha Raj, Matthew Johnson-Roberson, Sebastian Scherer,, Xiaonan Huang

TL;DR
This paper introduces a scalable noisy data synthesis pipeline, a comprehensive benchmark called Robust-Ego3D, and a novel test-time adaptation method CorrGS to improve ego-motion estimation and 3D reconstruction under real-world noisy conditions.
Contribution
It presents a new framework combining data generation, benchmarking, and a robust adaptation method to address noise challenges in ego-motion and 3D reconstruction.
Findings
CorrGS outperforms state-of-the-art methods in noisy scenarios.
The Robust-Ego3D benchmark reveals limitations of current models under noise.
Synthetic and real-world experiments validate the effectiveness of the proposed approach.
Abstract
We aim to redefine robust ego-motion estimation and photorealistic 3D reconstruction by addressing a critical limitation: the reliance on noise-free data in existing models. While such sanitized conditions simplify evaluation, they fail to capture the unpredictable, noisy complexities of real-world environments. Dynamic motion, sensor imperfections, and synchronization perturbations lead to sharp performance declines when these models are deployed in practice, revealing an urgent need for frameworks that embrace and excel under real-world noise. To bridge this gap, we tackle three core challenges: scalable data generation, comprehensive benchmarking, and model robustness enhancement. First, we introduce a scalable noisy data synthesis pipeline that generates diverse datasets simulating complex motion, sensor imperfections, and synchronization errors. Second, we leverage this pipeline to…
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Taxonomy
TopicsAdvanced Vision and Imaging · Advanced Image Processing Techniques · Image and Signal Denoising Methods
