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首页> 外文期刊>IEEE transactions on industrial informatics >Unsupervised-Learning-Based Continuous Depth and Motion Estimation With Monocular Endoscopy for Virtual Reality Minimally Invasive Surgery
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Unsupervised-Learning-Based Continuous Depth and Motion Estimation With Monocular Endoscopy for Virtual Reality Minimally Invasive Surgery

机译:基于无监督的学习的连续深度和运动估计,具有单眼内镜的虚拟现实微创手术

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摘要

Three-dimensional display and virtual reality technology have been applied in minimally invasive surgery to provide doctors with a more immersive surgical experience. One of the most popular systems based on this technology is the Da Vinci surgical robot system. The key to build the in vivo 3-D virtual reality model with a monocular endoscope is an accurate estimation of depth and motion. In this article, a fully unsupervised learning method for depth and motion estimation using the continuous monocular endoscopic video is proposed. After the detection of highlighted regions, EndoMotionNet and EndoDepthNet are designed to estimate ego-motion and depth, respectively. The timing information between consecutive frames is considered with a long short-term memory layer by EndoMotionNet to enhance the accuracy of ego-motion estimation. The estimated depth value of the previous frame is used to estimate the depth of the next frame by EndoDepthNet with a multimode fusion mechanism. The custom loss function is defined to improve the robustness and accuracy of the proposed unsupervised-learning-based method. Experiments with the public datasets verify that the proposed unsupervised-learning-based continuous depth and motion estimation method can effectively improve the accuracy of depth and motion estimation, especially after processing the continuous frame.
机译:三维显示器和虚拟现实技术已应用于微创手术,以提供具有更沉浸式手术经验的医生。基于该技术的最受欢迎的系统之一是Da Vinci外科机器人系统。构建具有单眼镜的Vivo 3-D虚拟现实模型的关键是对深度和运动的准确估计。在本文中,提出了一种使用连续单眼镜片视频的深度和运动估计的完全无监督的学习方法。在检测突出显示的区域后,Endomotionnet和Endodepthnet分别旨在分别估计自我运动和深度。通过Endomotionnet与长短期存储器层考虑连续帧之间的定时信息,以提高自我运动估计的准确性。前一帧的估计深度值用于通过具有多模融合机制的endodepthnet来估计下一帧的深度。定制损失函数被定义为提高所提出的无监督学习的方法的稳健性和准确性。与公共数据集的实验验证了所提出的无监督学习的连续深度和运动估计方法可以有效提高深度和运动估计的准确性,尤其是在处理连续框架之后。

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