摘要
This study proposed a lightweight but high-performance convolu-tion network for accurately classifying five upper limb movements of arm,involving forearm flexion and rotation,arm extension,lumbar touch and no reaction state,aiming to monitoring patient’s rehabilitation process and assist the therapist in elevating patient compliance with treatment.To achieve this goal,a lightweight convolution neural network TMCA-Net(Time Mul-tiscale Channel Attention Convolutional Neural Network)is designed,which combines attention mechanism,uses multi-branched convolution structure to automatically extract feature information at different scales from sensor data,and filters feature information based on attention mechanism.In particular,channel separation convolution is used to replace traditional convolution.This reduces the computational complexity of the model,decouples the convolution operation of the time dimension and the cross-channel feature interaction,which is helpful to the target optimization of feature extraction.TMCA-Net shows excellent performance in the upper limb rehabilitation ges-ture data,achieves 99.11%accuracy and 99.16%F1-score for the classification and recognition of five gestures.Compared with CNN and LSTM network,it achieves 65.62%and 89.98%accuracy in the same task.In addition,on the UCI smartphone public dataset,with the network parameters of one tenth of the current advanced model,the recognition accuracy rate of 95.21%has been achieved,which further proves the light weight and performance characteristics of the model.The clinical significance of this study is to accurately monitor patients’upper limb rehabilitation gesture by an affordable intelligent model as an auxiliary support for therapists’decision-making.
基金
funding from the Key Laboratory Foundation of National Defence Technology under Grant 61424010208,National Natural Science Foundation of China(Nos.41911530242 and 41975142)
5150 Spring Specialists(05492018012 and 05762018039)
Major Program of the National Social Science Fund of China(Grant No.17ZDA092)
333 High-Level Talent Cultivation Project of Jiangsu Province(BRA2018332)
Royal Society of Edinburgh,UK and China Natural Science Foundation Council(RSE Reference:62967_Liu_2018_2)
under their Joint International Projects funding scheme and basic Research Programs(Natural Science Foundation)of Jiangsu Province(BK20191398 and BK20180794).