Free-DyGS: Camera-Pose-Free Scene Reconstruction for Dynamic Surgical Videos with Gaussian Splatting
Qian Li, Shuojue Yang, Daiyun Shen, Jimmy Bok Yan So, Jing Qin, and, Yueming Jin

TL;DR
Free-DyGS introduces a Gaussian Splitting-based framework for fast, camera-pose-free reconstruction of highly dynamic surgical scenes with moving cameras, enhancing accuracy and efficiency.
Contribution
It pioneers a Gaussian Splitting approach for dynamic scene reconstruction without fixed camera poses in surgical videos, integrating novel scene initialization and deformation strategies.
Findings
Outperforms existing methods in rendering accuracy.
Achieves faster reconstruction times.
Effective on multiple surgical datasets.
Abstract
High-fidelity reconstruction of surgical scene is a fundamentally crucial task to support many applications, such as intra-operative navigation and surgical education. However, most existing methods assume the ideal surgical scenarios - either focus on dynamic reconstruction with deforming tissue yet assuming a given fixed camera pose, or allow endoscope movement yet reconstructing the static scenes. In this paper, we target at a more realistic yet challenging setup - free-pose reconstruction with a moving camera for highly dynamic surgical scenes. Meanwhile, we take the first step to introduce Gaussian Splitting (GS) technique to tackle this challenging setting and propose a novel GS-based framework for fast reconstruction, termed \textit{Free-DyGS}. Concretely, our model embraces a novel scene initialization in which a pre-trained Sparse Gaussian Regressor (SGR) can efficiently…
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Taxonomy
TopicsAdvanced Vision and Imaging · Surgical Simulation and Training · Augmented Reality Applications
