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Real-Time 3D Reconstruction of Colonoscopic Surfaces for Determining Missing Regions

机译:用于确定缺失区域的结肠镜曲面的实时三维重建

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Colonoscopy is the most widely used medical technique to screen the human large intestine (colon) for cancer precursors. However, frequently parts of the surface are not visualized, and it is hard for the endoscopist to realize that from the video. Non-visualization derives from lack of orientations of the endoscope to the full circumference of parts of the colon, occlusion from colon structures, and intervening materials inside the colon. Our solution is real-time dense 3D reconstruction of colon chunks with display of the missing regions. We accomplish this by a novel deep-learning-driven dense SLAM (simultaneous localization and mapping) system that can produce a camera trajectory and a dense reconstructed surface for colon chunks (small lengths of colon). Traditional SLAM systems work poorly for the low-textured colonoscopy frames and are subject to severe scale/camera drift. In our method a recurrent neural network (RNN) is used to predict scale-consistent depth maps and camera poses of successive frames. These outputs are incorporated into a standard SLAM pipeline with local windowed optimization. The depth maps are finally fused into a global surface using the optimized camera poses. To the best of our knowledge, we are the first to reconstruct dense colon surface from video in real time and to display missing surface.
机译:结肠镜检查是最广泛使用的医学技术,用于筛选人类大肠(结肠)用于癌症前体。然而,表面的经常部分不可思议,内窥镜师很难从视频中实现这一点。非可视化因内窥镜的缺乏取向,到结肠部分的部分,从结肠结构闭塞,以及结肠内的中间材料。我们的解决方案是具有缺失区域的冒号块的实时密集3D重建。我们通过新的深度学习驱动的密集SLAM(同时定位和映射)来实现这一点,该系统可以生产用于结肠块的相机轨迹和密集的重建表面(小的冒号长度)。传统的SLAM系统对于低纹理的结肠镜检查框架,适用于严重的刻度/相机漂移。在我们的方法中,反复性神经网络(RNN)用于预测连续帧的刻度一致的深度图和相机姿势。这些输出包含在具有本地窗口优化的标准SLAM管道中。深度映射最终使用优化的相机姿势融合到全局表面中。据我们所知,我们是第一个实时从视频重建茂密结肠表面,并显示缺失的表面。

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