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Object Recognition for Dental Instruments Using SSD-MobileNet

机译:使用SSD-MobileNet的牙科器械对象识别

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In recent technological developments, robot-assisted surgery has become popular due to its tremendous prospects in enhancing the capabilities of surgeons performing open surgery, yet very little effort has been made to make these tools available to dental surgeons. This paper addresses the problem of identifying the problem of real-time object recognition of dental instruments by utilizing deep learning techniques. For this reason, the Single Shot MultiBox Detector (SSD) network was considered as the meta structure and joined with the base Convolutional Neural Network (CNN) MobileNet to shape SSD-MobileNet. The task of object recognition for dental instruments like spatula, elevator, mouth mirror etc is performed, in order to constitute a robotic arm; that works with voice commands using speech recognition, and assists the dentist in surgery. Our method can recognize instruments more precisely and quickly as contrast with other lightweight system strategies and conventional machine learning techniques. We have achieved the precision and accuracy of 87.3% and 98.8% respectively.
机译:在最近的技术发展中,由于机器人辅助手术在增强外科医生进行开放式手术的能力方面具有广阔的前景,因此已变得很流行,但是为使这些工具可用于牙科外科医生却付出了很少的努力。本文探讨了利用深度学习技术来识别牙科器械的实时对象识别问题。因此,单发多盒检测器(SSD)网络被视为元结构,并与基本的卷积神经网络(CNN)MobileNet结合在一起构成了SSD-MobileNet。进行刮铲,升降机,口镜等牙科器械的目标识别任务,以构成机械臂;使用语音识别功能与语音命令配合使用,并协助牙医进行手术。与其他轻量级系统策略和常规机器学习技术相比,我们的方法可以更准确,更快地识别仪器。我们的精确度和准确度分别达到87.3%和98.8%。

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