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A Fast and Accurate Feature-Matching Algorithm for Minimally-Invasive Endoscopic Images

机译:一种微创内镜图像快速准确的特征匹配算法

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摘要

The ability to find image similarities between two distinct endoscopic views is known as feature matching, and is essential in many robotic-assisted minimally-invasive surgery (MIS) applications. Differently from feature-tracking methods, feature matching does not make any restrictive assumption about the chronological order between the two images or about the organ motion, but first obtains a set of appearance-based image matches, and subsequently removes possible outliers based on geometric constraints. As a consequence, feature-matching algorithms can be used to recover the position of any image feature after unexpected camera events, such as complete occlusions, sudden endoscopic-camera retraction, or strong illumination changes. We introduce the hierarchical multi-affine (HMA) algorithm, which improves over existing feature-matching methods because of the larger number of image correspondences, the increased speed, and the higher accuracy and robustness. We tested HMA over a large (and annotated) dataset with more than 100 MIS image pairs obtained from real interventions, and containing many of the aforementioned sudden events. In all of these cases, HMA outperforms the existing state-of-the-art methods in terms of speed, accuracy, and robustness. In addition, HMA and the image database are made freely available on the internet.
机译:在两个不同的内窥镜视图之间找到图像相似性的能力被称为特征匹配,并且在许多机器人辅助的微创手术(MIS)应用中至关重要。与特征跟踪方法不同,特征匹配不对两个图像之间的时间顺序或器官运动做出任何限制性假设,而是首先获得一组基于外观的图像匹配,然后基于几何约束条件删除可能的离群值。结果,特征匹配算法可用于在意外的相机事件(例如完全遮挡,突然的内窥镜相机缩回或强烈的照明变化)后恢复任何图像特征的位置。我们引入了层次多仿射(HMA)算法,该算法比现有的特征匹配方法有所改进,原因是图像对应的数量更多,速度更高,准确性和鲁棒性更高。我们在一个大型(带注释的)数据集上测试了HMA,该数据集包含从实际干预中获得的100多个MIS图像对,并且包含许多上述突发事件。在所有这些情况下,HMA在速度,准确性和鲁棒性方面均优于现有的最新方法。此外,HMA和图像数据库可在互联网上免费获得。

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