论文标题
Autolaparo:腹腔镜子宫切除术中图像引导的手术自动化的集成多任务的新数据集
AutoLaparo: A New Dataset of Integrated Multi-tasks for Image-guided Surgical Automation in Laparoscopic Hysterectomy
论文作者
论文摘要
计算机辅助的微创手术在使现代经营剧院受益方面具有巨大的潜力。从内窥镜流传输的视频数据提供了丰富的信息,以支持下一代智能手术系统的上下文意识。为了在过程中实现准确的感知和自动操纵,基于学习的技术是一种有希望的方法,近年来可以实现高级图像分析和场景的理解。但是,学习此类模型高度依赖于大规模,高质量和多任务标签的数据。目前,这是该主题的瓶颈,因为可用的公共数据集在CAI领域仍然非常有限。在本文中,我们介绍并发布了第一个具有多个基于图像的感知任务的集成数据集(称为Autolaparo),以促进子宫切除术手术中的基于学习的自动化。我们的Autolaparo数据集是根据整个子宫切除术程序的全长视频开发的。具体而言,数据集中制定了三个不同但高度相关的任务,包括手术工作流识别,腹腔镜运动预测以及仪器和关键解剖学细分。此外,我们还提供了最先进模型的实验结果,作为参考基准,用于该数据集的进一步模型开发和评估。该数据集可从https://autolaparo.github.io获得。
Computer-assisted minimally invasive surgery has great potential in benefiting modern operating theatres. The video data streamed from the endoscope provides rich information to support context-awareness for next-generation intelligent surgical systems. To achieve accurate perception and automatic manipulation during the procedure, learning based technique is a promising way, which enables advanced image analysis and scene understanding in recent years. However, learning such models highly relies on large-scale, high-quality, and multi-task labelled data. This is currently a bottleneck for the topic, as available public dataset is still extremely limited in the field of CAI. In this paper, we present and release the first integrated dataset (named AutoLaparo) with multiple image-based perception tasks to facilitate learning-based automation in hysterectomy surgery. Our AutoLaparo dataset is developed based on full-length videos of entire hysterectomy procedures. Specifically, three different yet highly correlated tasks are formulated in the dataset, including surgical workflow recognition, laparoscope motion prediction, and instrument and key anatomy segmentation. In addition, we provide experimental results with state-of-the-art models as reference benchmarks for further model developments and evaluations on this dataset. The dataset is available at https://autolaparo.github.io.