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Online 3D reconstruction and dense tracking in endoscopic videos

About

3D scene reconstruction from stereo endoscopic video data is crucial for advancing surgical interventions. In this work, we present an online framework for online, dense 3D scene reconstruction and tracking, aimed at enhancing surgical scene understanding and assisting interventions. Our method dynamically extends a canonical scene representation using Gaussian splatting, while modeling tissue deformations through a sparse set of control points. We introduce an efficient online fitting algorithm that optimizes the scene parameters, enabling consistent tracking and accurate reconstruction. Through experiments on the StereoMIS dataset, we demonstrate the effectiveness of our approach, outperforming state-of-the-art tracking methods and achieving comparable performance to offline reconstruction techniques. Our work enables various downstream applications thus contributing to advancing the capabilities of surgical assistance systems.

Michel Hayoz, Christopher Hahne, Thomas Kurmann, Max Allan, Guido Beldi, Daniel Candinas, ablo M\'arquez-Neila, Raphael Sznitman• 2024

Related benchmarks

TaskDatasetResultRank
Dense Point TrackingStereoMIS P1_1
MTE (px)21.04
3
Dense Point TrackingStereoMIS P2_0
MTE (px)7.91
3
Dense Point TrackingStereoMIS P2_1
MTE (px)14.29
3
Dense Point TrackingStereoMIS P3_1
MTE (px)4.14
3
Dense Point TrackingStereoMIS P3_2
MTE (px)14.2
3
Dense Point TrackingStereoMIS H1_1
MTE (px)10.51
3
Dense Point TrackingStereoMIS H3_1
MTE (px)8.6
3
Dense Point TrackingStereoMIS mean
MTE (px)11.53
3
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