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Lower Limb Motion Recognition Method Based on Improved Wavelet Packet Transform and Unscented Kalman Neural Network

机译:基于改进的小波包变换和Unscented Kalman神经网络的下肢运动识别方法

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Exoskeleton robot is a typical application to assist the motion of lower limbs. To make the lower extremity exoskeleton more flexible, it is necessary to identify various motion intentions of the lower limbs of the human body. Although more sEMG sensors can be used to identify more lower limb motion intention, with the increase in the number of sensors, more and more data need to be processed. In the process of human motion, the collected sEMG signal is easy to be interfered with noise. To improve the practicality of the lower extremity exoskeleton robot, this paper proposed a wavelet packet transform- (WPT-) based sliding window difference average filtering feature extract algorithm and the unscented Kalman neural network (UKFNN) recognition algorithm. We established an sEMG energy feature model, using a sliding window difference average filtering method to suppress noise interference and extracted stable feature values and using UKF filtering to optimize the neural network weights to improve the adaptability and accuracy of the recognition model. In this paper, we collected the sEMG signals of three muscles to identify six lower limb motion intentions. The average accuracy of 94.83% is proposed in this paper. Experiments show that the algorithm improves the accuracy and anti-interference of motion intention recognition of lower limb sEMG signals. The algorithm is superior to the backpropagation neural network (BPNN) recognition algorithm in the lower limb motion intention recognition and proves the effectiveness, novelty, and reliability of the method in this paper.
机译:外骨骼机器人是典型的应用,以帮助下肢运动。为了使下肢外骨骼更加灵活,有必要识别人体下肢的各种运动意图。尽管可以使用更多SEMG传感器来识别更多的低肢体运动意图,但是随着传感器的数量的增加,需要处理越来越多的数据。在人类运动的过程中,收集的SEMG信号易于干扰噪音。为了提高下肢外骨骼机器人的实用性,本文提出了一种基于小波分组变换 - (WPT-)的滑动窗口差平均滤波特征提取算法和Unscented Kalman神经网络(UKFNN)识别算法。我们建立了一个Semg能量特征模型,使用滑动窗口差异过滤方法来抑制噪声干扰并提取稳定的特征值,并使用UKF滤波来优化神经网络权重,以提高识别模型的适应性和准确性。在本文中,我们收集了三个肌肉的SEMG信号,以确定六个下肢运动意图。本文提出了94.83%的平均精度。实验表明,该算法提高了运动意向识别下肢SEMG信号的精度和抗干扰。该算法优于较低肢体运动意图识别的反向化神经网络(BPNN)识别算法,并证明了本文中该方法的有效性,新颖性和可靠性。

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