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Robust feature tracking for endoscopic pose estimation and structure recovery

机译:用于内窥镜姿势估计和结构恢复的强大特征跟踪

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Minimally invasive surgery is a highly complex medical discipline with several difficulties for the surgeon. To alleviate these difficulties, augmented reality can be used for intraoperative assistance. For visualization, the endoscope pose must be known which can be acquired with a SLAM (Simultaneous Localization and Mapping) approach using the endoscopic images. In this paper we focus on feature tracking for SLAM in minimally invasive surgery. Robust feature tracking and minimization of false correspondences is crucial for localizing the endoscope. As sensory input we use a stereo endoscope and evaluate different feature types in a developed SLAM framework. The accuracy of the endoscope pose estimation is validated with synthetic and ex vivo data. Furthermore we test the approach with in vivo image sequences from da Vinci interventions.
机译:微创手术是一种高度复杂的医学学科,为外科医生有几个困难。为了减轻这些困难,增强现实可用于术中援助。为了可视化,必须知道内窥镜姿势,其可以使用内窥镜图像用SLAM(同时定位和映射)方法来获取的内窥镜姿势。在本文中,我们专注于在微创手术中对SLAM的特征跟踪。虚假的特征跟踪和最小化虚假对应性对于本地化内窥镜是至关重要的。作为感官输入,我们使用立体声内窥镜,并在发达的SLAM框架中评估不同的特征类型。内窥镜姿势估计的精度用合成和离体数据验证。此外,我们测试了从Da Vinci干预的体内图像序列中的方法。

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