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Camera-Based Surgical Navigation System: Evaluation of Classification and Object Detection CNN Models for X-markers Detection

机译:基于相机的手术导航系统:评估分类和物体检测CNN模型,用于X标记检测

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In hip and spine surgery, accurate tracking of the medical instruments allows the surgeon to navigate the instruments accurately and safely within the operating field. X-markers based optical tracking are now applied in various fields owing to their simple shape and robustness against contamination and coverage. Nevertheless, they are not unique and easily distinguishable compared to other visual markers, e.g. ArUco, April Tags, QR codes, etc. Incorrect localization and classification of the X-markers hinder the pose estimation process. Recent studies have shown the great potential of deep learning approaches in solving visual marker detection problems often faced in conventional approaches. In this paper, we evaluate the performance of classification and object detection models for X-markers detection. To evaluate the models, we present our unique X-markers annotated dataset. The evaluation results show the high performance of classification and object detection models for X-markers detection, thereby outperforming the conventional methods. The models, however, have a higher computational cost in contrast to conventional methods.
机译:在髋关节和脊柱手术中,准确跟踪医疗器械允许外科医生准确,安全地在操作领域中浏览仪器。基于X标记的光学跟踪现在以其简单的形状和防污染和覆盖的鲁棒性来应用于各种领域。然而,与其他视觉标记相比,它们并不是独特的,并且容易区分,例如, ARUCO,APRIL标签,QR码等不正确的本地化和X标记的分类阻碍了姿势估计过程。最近的研究表明,在常规方法中,求解视觉标记检测问题的深度学习方法的巨大潜力。在本文中,我们评估了X标记检测的分类和物体检测模型的性能。要评估模型,我们呈现了我们独特的X标记注释数据集。评估结果表明了X标记检测的分类和物体检测模型的高性能,从而优于传统方法。然而,与传统方法相比,该模型具有更高的计算成本。

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