Puerto Gustavo A, Mariottini Gian-Luca
Department of Computer Science and Engineering, University of Texas at Arlington, 416 Yates Street, 76019 Texas, USA.
Med Image Comput Comput Assist Interv. 2012;15(Pt 2):625-33. doi: 10.1007/978-3-642-33418-4_77.
The ability to find image similarities (feature matching) between laparoscopic views 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 sequential nature of the two images or about the organ motion, and could then be used, e.g., to recover tracked features that were lost due to a prolonged occlusion, a sudden endoscopic-camera retraction, or a strong illumination change. This paper provides researchers in the medical-imaging computing community with an extensive comparison of the most up-to-date feature-matching algorithms over a large (and annotated) data set of 100 MIS-image pairs obtained from real interventions. The accuracy of these methods, as well as their ability to consistently retrieve as many good matches as possible, are evaluated for popular feature detectors. In addition, the dataset and the software implementations of these methods are made freely available on the Internet.
在许多机器人辅助微创手术(MIS)应用中,找到腹腔镜视图之间的图像相似性(特征匹配)的能力至关重要。与特征跟踪方法不同,特征匹配对两幅图像的顺序性质或器官运动不做任何限制性假设,因此可用于恢复因长时间遮挡、内窥镜摄像头突然回缩或光照强烈变化而丢失的跟踪特征。本文为医学成像计算领域的研究人员提供了对最新特征匹配算法的广泛比较,该比较基于从实际干预中获得的100对MIS图像的大型(且有注释)数据集。针对流行的特征检测器,评估了这些方法的准确性以及它们始终检索尽可能多的良好匹配的能力。此外,这些方法的数据集和软件实现可在互联网上免费获取。