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A Motion Intent Recognition Method for Lower Limbs Based on CNN-RF Combined Model

机译:基于CNN-RF组合模型的下肢运动意图识别方法

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Motion intent recognition as a key technology to help wearers control the exoskeleton of lower extremities has received extensive attention in recent years. The surface electromyography (sEMG) signal of the lower limbs is the most commonly used identification signal source. The traditional recognition method is to extract the feature manually and then use the machine learning method to train the model. The recognition accuracy depends on the prior knowledge, and the manual extraction feature is more troublesome. This paper uses a CNN-RF combined model to recognize five movements (stand, sit, walk, up and down stairs). Convolutional neural network (CNN) has autonomous learning ability automatically extracts features and can combines with traditional random forest (RF) model for training. Firstly, real-time experimental data was extracted by four-channel sEMG sensor and gyroscope, then the convolutional neural network automatically extracted features, finally the feature vector was fed to the random forest model for training. The experiment achieved a high accuracy on the test set and the training speed also meets real-time requirements, which proved the superiority of the method.
机译:运动意图识别是帮助穿戴者控制下肢外骨骼的关键技术,近年来受到了广泛的关注。下肢的表面肌电图(sEMG)信号是最常用的识别信号源。传统的识别方法是手动提取特征,然后使用机器学习方法训练模型。识别精度取决于先验知识,而手动提取功能则比较麻烦。本文使用CNN-RF组合模型来识别五种运动(站立,坐下,行走,上下楼梯)。卷积神经网络(CNN)具有自主学习能力,可以自动提取特征,并且可以与传统的随机森林(RF)模型结合进行训练。首先通过四通道sEMG传感器和陀螺仪提取实时实验数据,然后通过卷积神经网络自动提取特征,最后将特征向量输入到随机森林模型中进行训练。实验在测试集上达到了较高的精度,训练速度也满足实时要求,证明了该方法的优越性。

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