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首页> 外文期刊>Current Directions in Biomedical Engineering >Surface EMG-based Surgical Instrument Classification for Dynamic Activity Recognition in Surgical Workflows : Current Directions in Biomedical Engineering
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Surface EMG-based Surgical Instrument Classification for Dynamic Activity Recognition in Surgical Workflows : Current Directions in Biomedical Engineering

机译:基于表面肌电图的外科手术工作流中动态活动识别的外科器械分类:生物医学工程的当前方向

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We introduce a wearable-based recognition system for the classification of natural hand gestures during dynamic activities with surgical instruments. An armbandbased circular setup of eight EMG-sensors was used to superficially measure the muscle activation signals over the broadest cross-section of the lower arm. Instrument-specific surface EMG (sEMG) data acquisition was performed for 5 distinct instruments. In a first proof-of-concept study, EMG data were analyzed for unique signal courses and features, and in a subsequent classification, both decision tree (DTR) and shallow artificial neural network (ANN) classifiers were trained. For DTR, an ensemble bagging approach reached precision and recall rates of 0.847 and 0.854, respectively. The ANN network architecture was configured to mimic the ensemble-like structure of the DTR and achieved 0.952 and 0.953 precision and recall rates, respectively. In a subsequent multi-user study, classification achieved 70 % precision. Main errors potentially arise for instruments with similar gripping style and performed actions, interindividual variations in the acquisition procedure as well as muscle tone and activation magnitude. Compared to hand-mounted sensor systems, the lower arm setup does not alter the haptic experience or the instrument gripping, which is critical, especially in an intraoperative environment. Currently, drawbacks of the fixed consumer product setup are the limited data sampling rate and the denial of frequency features into the processing pipeline.
机译:我们引入了一种基于可穿戴设备的识别系统,用于在外科手术器械进行动态活动期间对自然手势进行分类。基于臂带的八个EMG传感器的圆形设置用于表面测量下臂最宽横截面上的肌肉激活信号。仪器特定的表面肌电图(sEMG)数据采集针对5种不同的仪器进行。在第一个概念验证研究中,分析了EMG数据的独特信号过程和特征,在随后的分类中,训练了决策树(DTR)和浅层人工神经网络(ANN)分类器。对于DTR,整体套袋方法的精确度和召回率分别为0.847和0.854。 ANN网络体系结构被配置为模仿DTR的整体结构,并分别达到0.952和0.953的精度和召回率。在随后的多用户研究中,分类达到了70%的精度。对于具有类似抓握方式和已执行动作,采集过程中个体差异以及肌张力和激活幅度的器械,可能会出现主要错误。与手持式传感器系统相比,下臂的设置不会改变触觉体验或器械的抓握,这一点至关重要,尤其是在术中环境中。当前,固定消费产品设置的缺点是数据采样率有限,并且频率特征无法进入处理流水线。

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