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Fast Part-Based Classification for Instrument Detection in Minimally Invasive Surgery

机译:基于快速的仪器检测分类在微创手术中的仪器检测

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Automatic visual detection of instruments in minimally invasive surgery (MIS) can significantly augment the procedure experience for operating clinicians. In this paper, we present a novel technique for detecting surgical instruments by constructing a robust and reliable instrument-part detector. While such detectors are typically slow to use, we introduce a novel early stopping scheme for multiclass ensemble classifiers which acts as a cascade and significantly reduces the computational requirements at test time, ultimately allowing it to run at framerate. We evaluate the effectiveness of our approach on instrument detection in retinal microsurgery and laparoscopic image sequences and demonstrate significant improvements in both accuracy and speed.
机译:在微创手术(MIS)中自动视觉检测仪器(MIS)可以显着增加操作临床医生的程序经验。 在本文中,我们提出了一种通过构建坚固且可靠的仪器部件检测器来检测手术器械的新技术。 虽然这种探测器通常用于使用速度,但我们介绍了一种新的早期停止方案,用于多种子组合奏分类器,其充当级联,并显着降低了测试时间的计算要求,最终允许其在帧中运行。 我们评估了我们对视网膜显微外科和腹腔镜图像序列中仪器检测的效果,并表现出精度和速度的显着改善。

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