Decoding of Multiple Wrist and Hand Movements Using a Transient EMG Classifier

被引:11
作者
D'Accolti, Daniele [1 ,2 ]
Dejanovic, Katarina [1 ,2 ]
Cappello, Leonardo [1 ,2 ]
Mastinu, Enzo [1 ,2 ]
Ortiz-Catalan, Max [3 ,4 ,5 ,6 ]
Cipriani, Christian [1 ,2 ]
机构
[1] Scuola Super Sant Anna, BioRobot Inst, I-56127 Pisa, Italy
[2] Scuola Super Sant Anna, Dept Excellence Robot & AI, I-56127 Pisa, Italy
[3] Ctr Bion & Pain Res, S-43130 Molndal, Sweden
[4] Chalmers Univ Technol, Dept Elect Engn, S-41296 Gothenburg, Sweden
[5] Sahlgrens Univ Hosp, Operat Area 3, S-41345 Molndal, Sweden
[6] Univ Gothenburg, Inst Clin Sci, Sahlgrenska Acad, Dept Orthopaed, S-40530 Gothenburg, Sweden
基金
瑞典研究理事会; 欧洲研究理事会;
关键词
Myoelectric control; pattern recognition; transient EMG; hand wrist prosthetics; cross-subject classifier; UPPER-LIMB PROSTHESES; MYOELECTRIC PATTERN-RECOGNITION; REAL-TIME; INTERFACES; SCHEME; ARM;
D O I
10.1109/TNSRE.2022.3218430
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
The design of prosthetic controllers bymeans of neurophysiologicalsignals still poses a crucial challenge to bioengineers. State of the art of electromyographic (EMG) continuous pattern recognition controllers rely on the questionable assumption that repeated muscular contractions produce repeatable patterns of steady-state EMG signals. Conversely, we propose an algorithm that decodes wrist and hand movements by processing the signals that immediately follow the onset of contraction (i.e., the transient EMG). We collected EMG data from the forearms of 14 non-amputee and 5 transradial amputee participants while they performed wrist flexion/extension, pronation/supination, and four hand grasps (power, lateral, bi-digital, open). We firstly identified the combination of wrist and hand movements that yielded the best control performance for the same participant (intra-subject classification). Then, we assessed the ability of our algorithm to classify participant data that were not included in the training set (cross-subject classification). Our controller achieved a median accuracy of similar to 96% with non-amputees, while it achieved heterogeneous outcomes with amputees, with a median accuracy of similar to 89%. Importantly, for each amputee, it produced at least one acceptable combination of wrist- hand movements (i.e., with accuracy > 85%). Regarding the cross-subject classifier, while our algorithm obtainedpromising resultswith non-amputees (accuracyup to similar to 80%), they were not as good with amputees (accuracy up to similar to 35%), possibly suggesting further assessments with domain-adaptation strategies. In general, our offline outcomes, together with a preliminary online assessment, support the hypothesis that the transient EMG decoding could represent a viable pattern recognition strategy, encouraging further online assessments.
引用
收藏
页码:208 / 217
页数:10
相关论文
共 47 条
[1]   An Analysis of Intrinsic and Extrinsic Hand Muscle EMG for Improved Pattern Recognition Control [J].
Adewuyi, Adenike A. ;
Hargrove, Levi J. ;
Kuiken, Todd A. .
IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, 2016, 24 (04) :485-494
[2]   Improving the Performance Against Force Variation of EMG Controlled Multifunctional Upper-Limb Prostheses for Transradial Amputees [J].
Al-Timemy, Ali H. ;
Khushaba, Rami N. ;
Bugmann, Guido ;
Escudero, Javier .
IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, 2016, 24 (06) :650-661
[3]   Classification of Finger Movements for the Dexterous Hand Prosthesis Control With Surface Electromyography [J].
Al-Timemy, Ali H. ;
Bugmann, Guido ;
Escudero, Javier ;
Outram, Nicholas .
IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2013, 17 (03) :608-618
[4]   Reducing multiclass to binary: A unifying approach for margin classifiers [J].
Allwein, EL ;
Schapire, RE ;
Singer, Y .
JOURNAL OF MACHINE LEARNING RESEARCH, 2001, 1 (02) :113-141
[5]   Limb Position Tolerant Pattern Recognition for Myoelectric Prosthesis Control with Adaptive Sparse Representations From Extreme Learning [J].
Betthauser, Joseph L. ;
Hunt, Christopher L. ;
Osborn, Luke E. ;
Masters, Matthew R. ;
Levay, Gyorgy ;
Kaliki, Rahul R. ;
Thakor, Nitish V. .
IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING, 2018, 65 (04) :770-778
[6]   Electromyography-Based Gesture Recognition: Is It Time to Change Focus From the Forearm to the Wrist? [J].
Botros, Fady S. ;
Phinyomark, Angkoon ;
Scheme, Erik J. .
IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2022, 18 (01) :174-184
[7]  
BOTTOMLEY A H, 1965, J Bone Joint Surg Br, V47, P411
[8]  
Calado A, 2019, IEEE INT CONF AUTON, P276, DOI 10.1109/IRMMW-THz.2019.8873701
[9]   Multi-subject/daily-life activity EMG-based control of mechanical hands [J].
Castellini, Claudio ;
Fiorilla, Angelo Emanuele ;
Sandini, Giulio .
JOURNAL OF NEUROENGINEERING AND REHABILITATION, 2009, 6
[10]   Deep Learning for Electromyographic Hand Gesture Signal Classification Using Transfer Learning [J].
Cote-Allard, Ulysse ;
Fall, Cheikh Latyr ;
Drouin, Alexandre ;
Campeau-Lecours, Alexandre ;
Gosselin, Clement ;
Glette, Kyrre ;
Laviolette, Francois ;
Gosselin, Benoit .
IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, 2019, 27 (04) :760-771