Efficient Deformable Tissue Reconstruction via Orthogonal Neural Plane
Chen Yang, Kailing Wang, Yuehao Wang, Qi Dou, Xiaokang Yang, Wei Shen

TL;DR
This paper presents Forplane, an efficient neural radiance field framework for reconstructing deformable tissues intraoperatively, significantly reducing computation time while maintaining high quality, thus enhancing surgical applications.
Contribution
Introduction of Forplane, a novel neural radiance field-based method that factorizes 4D tissue volumes into orthogonal neural planes for faster reconstruction.
Findings
Over 100x faster optimization
Over 15x faster inference
Maintains or improves reconstruction quality
Abstract
Intraoperative imaging techniques for reconstructing deformable tissues in vivo are pivotal for advanced surgical systems. Existing methods either compromise on rendering quality or are excessively computationally intensive, often demanding dozens of hours to perform, which significantly hinders their practical application. In this paper, we introduce Fast Orthogonal Plane (Forplane), a novel, efficient framework based on neural radiance fields (NeRF) for the reconstruction of deformable tissues. We conceptualize surgical procedures as 4D volumes, and break them down into static and dynamic fields comprised of orthogonal neural planes. This factorization iscretizes the four-dimensional space, leading to a decreased memory usage and faster optimization. A spatiotemporal importance sampling scheme is introduced to improve performance in regions with tool occlusion as well as large motions…
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Taxonomy
Topics3D Shape Modeling and Analysis · Advanced Vision and Imaging · Computer Graphics and Visualization Techniques
