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Real-time classification of multi-modal sensory data for prosthetic hand control

机译:用于假肢手控的多模态感觉数据的实时分类

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摘要

Recent work on myoelectric prosthetic control has shown that the incorporation of accelerometry information along with surface electromyography (sEMG) has the potential of improving the performance and robustness of a prosthetic device by increasing the classification accuracy. In this study, we investigated whether myoelectric control could further benefit from the use of additional sensory modalities such as gyroscopes and magnetometers. We trained a multi-class linear discriminant analysis (LDA) classifier to discriminate between six hand grip patterns and used predictions to control a robotic prosthetic hand in real-time. We recorded initial training data by using a total number of 12 sEMG sensors, each of which integrated a 9 degree-of-freedom inertial measurement unit (IMU). For classification, four different decoding schemes were used; 1) sEMG and IMU from all sensors 2) sEMG from all sensors, 3) IMU from all sensors and, finally, 4) sEMG and IMU from a nearly optimal subset of sensors. These schemes were evaluated based on offline classification accuracy on the training data, as well as with task-related metrics such as completion rates and times for a pick-and-place real-time experiment. We found that the classifier trained with all the sensory modalities and sensors (condition 1) attained the best decoding performance by achieving a 90.4% completion rate with an average completion time of 41.9 sec in real-time experiments. We also found that classifiers incorporating sEMG and IMU information outperformed on average the ones that only used sEMG signals, even when the amount of sensors used was less than half in the former case. These results suggest that using extra modalities along with sEMG might be more beneficial than including additional sEMG sensors.
机译:肌电修复控制的最新研究表明,加速度计信息与表面肌电图(sEMG)的结合具有通过提高分类精度来改善修复设备性能和耐用性的潜力。在这项研究中,我们调查了肌电控制是否可以进一步受益于使用诸如陀螺仪和磁力计之类的其他传感方式。我们训练了多类线性判别分析(LDA)分类器,以区分六个手部抓握模式,并使用预测来实时控制机器人义肢。我们通过使用总共12个sEMG传感器记录了初始训练数据,每个传感器都集成了9个自由度惯性测量单元(IMU)。为了分类,使用了四种不同的解码方案。 1)来自所有传感器的sEMG和IMU 2)来自所有传感器的sEMG,3)来自所有传感器的IMU,最后是4)来自传感器的最佳子集的sEMG和IMU。这些方案是根据训练数据的离线分类准确性以及与任务相关的指标(如完成率和取放实时实验的时间)进行评估的。我们发现,在实时实验中,通过所有感觉模态和传感器(条件1)训练的分类器通过达到90.4%的完成率和41.9秒的平均完成时间,获得了最佳的解码性能。我们还发现,结合了sEMG和IMU信息的分类器的平均性能优于仅使用sEMG信号的分类器,即使在前一种情况下使用的传感器数量不到一半。这些结果表明,与sEMG一起使用额外的模式可能比包括其他sEMG传感器更有益。

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