Graduate Program in Electrical Engineering (PPGEE), Federal University of Technology-Paraná (UTFPR), Ponta Grossa 84017-220, PR, Brazil.
Graduate Program in Electrical Engineering and Industrial Informatics (CPGEI), Federal University of Technology-Paraná (UTFPR), Curitiba 80230-901, PR, Brazil.
Sensors (Basel). 2023 Jul 7;23(13):6233. doi: 10.3390/s23136233.
Surgical Instrument Signaling (SIS) is compounded by specific hand gestures used by the communication between the surgeon and surgical instrumentator. With SIS, the surgeon executes signals representing determined instruments in order to avoid error and communication failures. This work presented the feasibility of an SIS gesture recognition system using surface electromyographic (sEMG) signals acquired from the Myo armband, aiming to build a processing routine that aids telesurgery or robotic surgery applications. Unlike other works that use up to 10 gestures to represent and classify SIS gestures, a database with 14 selected gestures for SIS was recorded from 10 volunteers, with 30 repetitions per user. Segmentation, feature extraction, feature selection, and classification were performed, and several parameters were evaluated. These steps were performed by taking into account a wearable application, for which the complexity of pattern recognition algorithms is crucial. The system was tested offline and verified as to its contribution for all databases and each volunteer individually. An automatic segmentation algorithm was applied to identify the muscle activation; thus, 13 feature sets and 6 classifiers were tested. Moreover, 2 ensemble techniques aided in separating the sEMG signals into the 14 SIS gestures. Accuracy of 76% was obtained for the Support Vector Machine classifier for all databases and 88% for analyzing the volunteers individually. The system was demonstrated to be suitable for SIS gesture recognition using sEMG signals for wearable applications.
手术器械信号(SIS)是由外科医生和手术器械师之间的特定手势组合而成的。通过 SIS,外科医生执行代表特定器械的信号,以避免错误和通信故障。本工作提出了使用从 Myo 臂带采集的表面肌电(sEMG)信号来识别 SIS 手势的可行性,旨在构建一个处理例程,辅助远程手术或机器人手术应用。与其他使用多达 10 个手势来表示和分类 SIS 手势的工作不同,本数据库记录了来自 10 名志愿者的 14 个选定的 SIS 手势,每个用户重复 30 次。执行了分段、特征提取、特征选择和分类,并评估了几个参数。这些步骤考虑到了可穿戴应用程序,这对于模式识别算法的复杂性至关重要。系统进行了离线测试,并验证了其对所有数据库和每个志愿者的贡献。应用了自动分段算法来识别肌肉激活;因此,测试了 13 个特征集和 6 个分类器。此外,2 种集成技术有助于将 sEMG 信号分为 14 个 SIS 手势。对于所有数据库,支持向量机分类器的准确率达到 76%,对于逐个分析志愿者,准确率达到 88%。该系统被证明适用于使用可穿戴应用程序的 sEMG 信号识别 SIS 手势。