High-Density Surface EMG-Based Gesture Recognition Using a 3D Convolutional Neural Network

被引:62
作者
Chen, Jiangcheng [1 ]
Bi, Sheng [1 ,2 ]
Zhang, George [1 ]
Cao, Guangzhong [3 ]
机构
[1] Shenzhen Acad Robot, Shenzhen 518057, Peoples R China
[2] South China Univ Technol, Sch Comp Sci & Engn, Guangzhou 510006, Peoples R China
[3] Shenzhen Univ, Shenzhen Key Lab Electromagnet Control, Shenzhen 518060, Peoples R China
基金
中国国家自然科学基金;
关键词
high-density surface EMG (HD-sEMG); finger gesture recognition; deep learning; convolutional neural network (CNN); MYOELECTRIC CONTROL; IDENTIFICATION; SIGNALS;
D O I
10.3390/s20041201
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
High-density surface electromyography (HD-sEMG) and deep learning technology are becoming increasingly used in gesture recognition. Based on electrode grid data, information can be extracted in the form of images that are generated with instant values of multi-channel sEMG signals. In previous studies, image-based, two-dimensional convolutional neural networks (2D CNNs) have been applied in order to recognize patterns in the electrical activity of muscles from an instantaneous image. However, 2D CNNs with 2D kernels are unable to handle a sequence of images that carry information concerning how the instantaneous image evolves with time. This paper presents a 3D CNN with 3D kernels to capture both spatial and temporal structures from sequential sEMG images and investigates its performance on HD-sEMG-based gesture recognition in comparison to the 2D CNN. Extensive experiments were carried out on two benchmark datasets (i.e., CapgMyo DB-a and CSL-HDEMG). The results show that, where the same network architecture is used, 3D CNN can achieve a better performance than 2D CNN, especially for CSL-HDEMG, which contains the dynamic part of finger movement. For CapgMyo DB-a, the accuracy of 3D CNN was 1% higher than 2D CNN when the recognition window length was equal to 40 ms, and was 1.5% higher when equal to 150 ms. For CSL-HDEMG, the accuracies of 3D CNN were 15.3% and 18.6% higher than 2D CNN when the window length was equal to 40 ms and 150 ms, respectively. Furthermore, 3D CNN achieves a competitive performance in comparison to the baseline methods.
引用
收藏
页数:13
相关论文
共 36 条
[1]   Hand Gesture Recognition Using 3D-CNN Model [J].
Al-Hammadi, Muneer ;
Muhammad, Ghulam ;
Abdul, Wadood ;
Alsulaiman, Mansour ;
Hossain, M. Shamim .
IEEE CONSUMER ELECTRONICS MAGAZINE, 2020, 9 (01) :95-101
[2]  
Allard UC, 2016, 2016 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS 2016), P2464, DOI 10.1109/IROS.2016.7759384
[3]   Advancing Muscle-Computer Interfaces with High-Density Electromyography [J].
Amma, Christoph ;
Krings, Thomas ;
Boer, Jonas ;
Schultz, Tanja .
CHI 2015: PROCEEDINGS OF THE 33RD ANNUAL CHI CONFERENCE ON HUMAN FACTORS IN COMPUTING SYSTEMS, 2015, :929-938
[4]  
[Anonymous], IEEE T PATTERN ANAL, DOI DOI 10.1109/ICCICCT.2016.7987947
[5]  
[Anonymous], C COMP VIS PATT REC
[6]   Deep Learning with Convolutional Neural Networks Applied to Electromyography Data: A Resource for the Classification of Movements for Prosthetic Hands [J].
Atzori, Manfredo ;
Cognolato, Matteo ;
Mueller, Henning .
FRONTIERS IN NEUROROBOTICS, 2016, 10
[7]   Electromyography data for non-invasive naturally-controlled robotic hand prostheses [J].
Atzori, Manfredo ;
Gijsberts, Arjan ;
Castellini, Claudio ;
Caputo, Barbara ;
Hager, Anne-Gabrielle Mittaz ;
Elsig, Simone ;
Giatsidis, Giorgio ;
Bassetto, Franco ;
Muller, Henning .
SCIENTIFIC DATA, 2014, 1
[8]   Continuous myoelectric control for powered prostheses using hidden Markov models [J].
Chan, ADC ;
Englehart, KB .
IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING, 2005, 52 (01) :121-124
[9]   Surface EMG based continuous estimation of human lower limb joint angles by using deep belief networks [J].
Chen, Jiangcheng ;
Zhang, Xiaodong ;
Cheng, Yu ;
Xi, Ning .
BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2018, 40 :335-342
[10]   Learning Spatiotemporal Features with 3D Convolutional Networks [J].
Du Tran ;
Bourdev, Lubomir ;
Fergus, Rob ;
Torresani, Lorenzo ;
Paluri, Manohar .
2015 IEEE INTERNATIONAL CONFERENCE ON COMPUTER VISION (ICCV), 2015, :4489-4497