SAGE: SLAM with Appearance and Geometry Prior for Endoscopy.

Xingtong Liu, Zhaoshuo Li, Masaru Ishii, Gregory D Hager, Russell H Taylor, Mathias Unberath
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引用次数: 13

Abstract

In endoscopy, many applications (e.g., surgical navigation) would benefit from a real-time method that can simultaneously track the endoscope and reconstruct the dense 3D geometry of the observed anatomy from a monocular endoscopic video. To this end, we develop a Simultaneous Localization and Mapping system by combining the learning-based appearance and optimizable geometry priors and factor graph optimization. The appearance and geometry priors are explicitly learned in an end-to-end differentiable training pipeline to master the task of pair-wise image alignment, one of the core components of the SLAM system. In our experiments, the proposed SLAM system is shown to robustly handle the challenges of texture scarceness and illumination variation that are commonly seen in endoscopy. The system generalizes well to unseen endoscopes and subjects and performs favorably compared with a state-of-the-art feature-based SLAM system. The code repository is available at https://github.com/lppllppl920/SAGE-SLAM.git.

Abstract Image

SAGE: SLAM与外观和几何形状的内窥镜检查。
在内窥镜中,许多应用(例如手术导航)将受益于实时方法,该方法可以同时跟踪内窥镜并从单眼内窥镜视频中重建观察到的解剖结构的密集3D几何形状。为此,我们将基于学习的外观与可优化的几何先验和因子图优化相结合,开发了一个同步定位和映射系统。在端到端可微分训练管道中明确学习外观和几何先验,以掌握成对图像对齐任务,这是SLAM系统的核心组件之一。在我们的实验中,所提出的SLAM系统被证明可以鲁棒地处理内窥镜中常见的纹理稀缺性和光照变化的挑战。该系统可以很好地推广到看不见的内窥镜和受试者,与最先进的基于特征的SLAM系统相比,该系统表现良好。代码存储库可从https://github.com/lppllppl920/SAGE-SLAM.git获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
6.80
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