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Neural network committees for finger joint angle estimation from surface EMG signals

机译:神经网络委员会根据表面肌电信号估计手指关节角度

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Background In virtual reality (VR) systems, the user's finger and hand positions are sensed and used to control the virtual environments. Direct biocontrol of VR environments using surface electromyography (SEMG) signals may be more synergistic and unconstraining to the user. The purpose of the present investigation was to develop a technique to predict the finger joint angle from the surface EMG measurements of the extensor muscle using neural network models. Methodology SEMG together with the actual joint angle measurements were obtained while the subject was performing flexion-extension rotation of the index finger at three speeds. Several neural networks were trained to predict the joint angle from the parameters extracted from the SEMG signals. The best networks were selected to form six committees. The neural network committees were evaluated using data from new subjects. Results There was hysteresis in the measured SMEG signals during the flexion-extension cycle. However, neural network committees were able to predict the joint angle with reasonable accuracy. RMS errors ranged from 0.085 ± 0.036 for fast speed finger-extension to 0.147 ± 0.026 for slow speed finger extension, and from 0.098 ± 0.023 for the fast speed finger flexion to 0.163 ± 0.054 for slow speed finger flexion. Conclusion Although hysteresis was observed in the measured SEMG signals, the committees of neural networks were able to predict the finger joint angle from SEMG signals.
机译:背景技术在虚拟现实(VR)系统中,用户的手指和手的位置被感测并用于控制虚拟环境。使用表面肌电图(SEMG)信号对VR环境进行直接生物控制可能对用户更为协同和不受约束。本研究的目的是开发一种使用神经网络模型从伸肌表面EMG测量值预测手指关节角度的技术。在对象以三种速度执行食指的屈伸旋转时,获得了方法学SEMG和实际的关节角度测量值。训练了多个神经网络,以根据从SEMG信号中提取的参数预测关节角度。最佳网络被选为六个委员会。使用来自新受试者的数据对神经网络委员会进行了评估。结果屈伸周期中测得的SMEG信号存在滞后现象。但是,神经网络委员会能够以合理的精度预测关节角度。 RMS误差范围为:快速手指伸展的0.085±0.036,慢速手指伸展的0.147±0.026,快速手指屈曲的0.098±0.023,以及慢速手指屈曲的0.163±0.054。结论尽管在测得的SEMG信号中观察到了滞后现象,但神经网络委员会仍能够从SEMG信号中预测手指关节角度。

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