Minimally invasive surgery is a surgical intervention used to examine the organs inside the abdomen and has been widely used due to its effectiveness over open surgery. Due to the hardware improvements such as high definition cameras, this procedure has significantly improved and new software methods have demonstrated potential for computer-assisted procedures. However, there exists challenges and requirements to improve detection and tracking of the position of the instruments during these surgical procedures. To this end, we evaluate and compare some popular deep learning methods that can be explored for the automated segmentation of surgical instruments in laparoscopy, an important step towards tool tracking. Our experimental results exhibit that the Dual decoder attention network (DDANet) produces a superior result compared to other recent deep learning methods. DDANet yields a Dice coefficient of 0.8739 and mean intersection-over-union of 0.8183 for the Robust Medical Instrument Segmentation (ROBUST-MIS) Challenge 2019 dataset, at a real-time speed of 101.36 frames-per-second that is critical for such procedures.
翻译:微小侵入性手术是一种外科手术,用于检查腹部内的器官,由于在开放手术中的效果,这种手术已被广泛使用。由于高定义照相机等硬件的改进,这一程序已大为改善,新的软件方法也证明具有计算机辅助程序的潜力。然而,在这些外科手术过程中,在改进检测和跟踪仪器位置方面存在着各种挑战和要求。为此,我们评估和比较了某些广受欢迎的深层次学习方法,这些方法可用于对腹腔外科仪器进行自动分解,这是向工具跟踪迈出的重要一步。我们的实验结果显示,与最近的其他深层学习方法相比,双分解关注网络(DDRONet)产生了优异效果。DADNet得出了0.8739的骰子系数,平均交叉组合0.8183,用于Robust医疗仪器分解(ROBUST-MIS)挑战2019数据集,其实时速度为每秒101.36框架,对这些程序至关重要。