Computer-assisted systems are becoming broadly used in medicine. In endoscopy, most research focuses on automatic detection of polyps or other pathologies, but localization and navigation of the endoscope is completely performed manually by physicians. To broaden this research and bring spatial Artificial Intelligence to endoscopies, data from complete procedures are needed. This data will be used to build a 3D mapping and localization systems that can perform special task like, for example, detect blind zones during exploration, provide automatic polyp measurements, guide doctors to a polyp found in a previous exploration and retrieve previous images of the same area aligning them for easy comparison. These systems will provide an improvement in the quality and precision of the procedures while lowering the burden on the physicians. This paper introduces the Endomapper dataset, the first collection of complete endoscopy sequences acquired during regular medical practice, including slow and careful screening explorations, making secondary use of medical data. Its original purpose is to facilitate the development and evaluation of VSLAM (Visual Simultaneous Localization and Mapping) methods in real endoscopy data. The first release of the dataset is composed of 59 sequences with more than 15 hours of video. It is also the first endoscopic dataset that includes both the computed geometric and photometric endoscope calibration with the original calibration videos. Meta-data and annotations associated to the dataset varies from anatomical landmark and description of the procedure labeling, tools segmentation masks, COLMAP 3D reconstructions, simulated sequences with groundtruth and meta-data related to special cases, such as sequences from the same patient. This information will improve the research in endoscopic VSLAM, as well as other research lines, and create new research lines.
翻译:计算机辅助系统正在广泛用于医学。 在内镜检查中,大多数研究的重点是对聚虫或其他病理进行自动检测,但内镜的本地化和导航完全由医生手工完成。为了扩大这一研究,将空间人工智能带入内镜复制,需要从完整的程序中收集数据。这些数据将用来建立3D绘图和本地化系统,该系统可以执行特殊任务,例如,在勘探期间探测盲区,提供自动多功能测量,指导医生对先前探索中发现的聚虫或其他病理学进行自动检测,并检索同一区域以前的图象,以便进行比较。这些系统将提高程序的质量和精确度,同时减轻医生的负担。为了扩大研究范围,需要从完整的程序将空间人工智能智能智能情报带带到内镜,包括缓慢和仔细的筛选探索,对医疗数据进行二次利用。它最初的目的是促进VSLAM的开发和评估(视觉模拟模拟和模拟的系统)方法的开发和评估,从实际内镜学数据中,首次发布数据序列和直径解的DNA数据,从原始的平序到原始的平面数据,从原始的平面的平面数据,从原始的平面的平面数据将包括原始的平序,从原始的平面的平面的平面的平面数据,从原始的平面的平面的平面的平面的平面数据,从原始的平面的平面的平面的平面的平面的数据。