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首页|SurgTPGS: Semantic 3D Surgical Scene Understanding with Text Promptable Gaussian Splatting

SurgTPGS: Semantic 3D Surgical Scene Understanding with Text Promptable Gaussian Splatting

SurgTPGS: Semantic 3D Surgical Scene Understanding with Text Promptable Gaussian Splatting

来源:Arxiv_logoArxiv
英文摘要

In contemporary surgical research and practice, accurately comprehending 3D surgical scenes with text-promptable capabilities is particularly crucial for surgical planning and real-time intra-operative guidance, where precisely identifying and interacting with surgical tools and anatomical structures is paramount. However, existing works focus on surgical vision-language model (VLM), 3D reconstruction, and segmentation separately, lacking support for real-time text-promptable 3D queries. In this paper, we present SurgTPGS, a novel text-promptable Gaussian Splatting method to fill this gap. We introduce a 3D semantics feature learning strategy incorporating the Segment Anything model and state-of-the-art vision-language models. We extract the segmented language features for 3D surgical scene reconstruction, enabling a more in-depth understanding of the complex surgical environment. We also propose semantic-aware deformation tracking to capture the seamless deformation of semantic features, providing a more precise reconstruction for both texture and semantic features. Furthermore, we present semantic region-aware optimization, which utilizes regional-based semantic information to supervise the training, particularly promoting the reconstruction quality and semantic smoothness. We conduct comprehensive experiments on two real-world surgical datasets to demonstrate the superiority of SurgTPGS over state-of-the-art methods, highlighting its potential to revolutionize surgical practices. SurgTPGS paves the way for developing next-generation intelligent surgical systems by enhancing surgical precision and safety. Our code is available at: https://github.com/lastbasket/SurgTPGS.

Yiming Huang、Long Bai、Beilei Cui、Kun Yuan、Guankun Wang、Mobarak I. Hoque、Nicolas Padoy、Nassir Navab、Hongliang Ren

医学研究方法医学现状、医学发展临床医学

Yiming Huang,Long Bai,Beilei Cui,Kun Yuan,Guankun Wang,Mobarak I. Hoque,Nicolas Padoy,Nassir Navab,Hongliang Ren.SurgTPGS: Semantic 3D Surgical Scene Understanding with Text Promptable Gaussian Splatting[EB/OL].(2025-07-01)[2025-07-21].https://arxiv.org/abs/2506.23309.点此复制

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