基于表面正常的结肠镜重建神经框架

Shuxian Wang, Yubo Zhang, Sarah K. McGill, J. Rosenman, Jan-Michael Frahm, Soumyadip Sengupta, S. Pizer
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引用次数: 1

摘要

由于视频帧中的照明和反射率变化可能导致有缺陷的形状预测,因此从结肠镜检查视频中重建3D表面具有挑战性。为了克服这一挑战,我们利用表面法向量的特点,开发了一个两步神经框架,显著提高了结肠镜重建质量。使用自监督法线一致性损失训练的基于法线的深度初始化网络为法线深度细化模块提供深度图初始化,该模块利用光照和表面法线之间的关系递归地细化逐帧的法线和深度预测。我们的框架在模拟结肠镜数据上的深度精度表现表明了在结肠镜重建中利用表面法线的价值,特别是在正面视图上。由于其低深度误差,我们的框架预测结果需要有限的后处理才能临床应用于实时结肠镜重建。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Surface-normal Based Neural Framework for Colonoscopy Reconstruction
Reconstructing a 3D surface from colonoscopy video is challenging due to illumination and reflectivity variation in the video frame that can cause defective shape predictions. Aiming to overcome this challenge, we utilize the characteristics of surface normal vectors and develop a two-step neural framework that significantly improves the colonoscopy reconstruction quality. The normal-based depth initialization network trained with self-supervised normal consistency loss provides depth map initialization to the normal-depth refinement module, which utilizes the relationship between illumination and surface normals to refine the frame-wise normal and depth predictions recursively. Our framework's depth accuracy performance on phantom colonoscopy data demonstrates the value of exploiting the surface normals in colonoscopy reconstruction, especially on en face views. Due to its low depth error, the prediction result from our framework will require limited post-processing to be clinically applicable for real-time colonoscopy reconstruction.
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