CVDec 17, 2025

Robust Multi-view Camera Calibration from Dense Matches

arXiv:2512.15608v1h-index: 2
Originality Synthesis-oriented
AI Analysis

This incremental improvement could benefit researchers in animal behavior studies and forensic analysis of surveillance footage.

The paper tackles the problem of robust multi-view camera calibration by improving structure-from-motion pipelines, achieving 79.9% accuracy compared to 40.4% for a baseline method on cameras with strong radial distortion.

Estimating camera intrinsics and extrinsics is a fundamental problem in computer vision, and while advances in structure-from-motion (SfM) have improved accuracy and robustness, open challenges remain. In this paper, we introduce a robust method for pose estimation and calibration. We consider a set of rigid cameras, each observing the scene from a different perspective, which is a typical camera setup in animal behavior studies and forensic analysis of surveillance footage. Specifically, we analyse the individual components in a structure-from-motion (SfM) pipeline, and identify design choices that improve accuracy. Our main contributions are: (1) we investigate how to best subsample the predicted correspondences from a dense matcher to leverage them in the estimation process. (2) We investigate selection criteria for how to add the views incrementally. In a rigorous quantitative evaluation, we show the effectiveness of our changes, especially for cameras with strong radial distortion (79.9% ours vs. 40.4 vanilla VGGT). Finally, we demonstrate our correspondence subsampling in a global SfM setting where we initialize the poses using VGGT. The proposed pipeline generalizes across a wide range of camera setups, and could thus become a useful tool for animal behavior and forensic analysis.

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