基于更快R-CNN架构的智能训练箱系统腹腔镜器械多类检测

F. Fathabadi, J. Grantner, Saad A. Shebrain, I. Abdel-Qader
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引用次数: 12

摘要

腹腔镜手术盒-训练器设备已被外科住院医师用来学习传统上不教给外科医生的特定技能。然而,对性能的评估是粗糙的,经常只关注速度或主观观察。为了更好地进行客观评估,应该记录居民的效率,跟踪过程,并建立一个系统来提供一致的自动评估和分析。在本文中,我们提出了一个新的框架来检测和识别我们的智能盒训练系统的多类腹腔镜仪器。这个框架是基于更快的R-CNN架构和RESNet-50的开源模块与我们的自定义数据集(AR-Set)。尽管训练样本的数量相对有限,但实验结果证明,我们的方法对于定位感兴趣的区域和检测多类仪器是有效的。这项研究是由霍默·斯崔克医学院电气与计算机工程系和外科系合作完成的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Class Detection of Laparoscopic Instruments for the Intelligent Box-Trainer System Using Faster R-CNN Architecture
Laparoscopic Surgical Box-Trainer devices have been used by surgery residents to learn specific skills not traditionally taught to surgeons. Assessment of performance, however, is crude, frequently focusing on speed alone or subjective observations. For a better, objective assessment, the residents' efficiency should be recorded and have the process be tracked and have a system in place to provide consistent automated assessment and analysis. In this paper, we propose a novel framework for the detection and recognition of multi-class laparoscopic instruments for our Intelligent Box-Trainer System. This framework is based upon the Faster R-CNN architecture and RESNet-50 for an open-source module with our custom dataset (AR-Set). Despite a relatively limited number of training examples, experimental results have proved that our approach is effective for locating regions of interest and detecting multi-class instruments. This research is a cooperation between the Department of Electrical and Computer Engineering and the Department of Surgery of the Homer Stryker M.D. School of Medicine, at WMU.
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