Literature DB >> 24760932

Movement error rate for evaluation of machine learning methods for sEMG-based hand movement classification.

Arjan Gijsberts, Manfredo Atzori, Claudio Castellini, Henning Muller, Barbara Caputo.   

Abstract

There has been increasing interest in applying learning algorithms to improve the dexterity of myoelectric prostheses. In this work, we present a large-scale benchmark evaluation on the second iteration of the publicly released NinaPro database, which contains surface electromyography data for 6 DOF force activations as well as for 40 discrete hand movements. The evaluation involves a modern kernel method and compares performance of three feature representations and three kernel functions. Both the force regression and movement classification problems can be learned successfully when using a nonlinear kernel function, while the exp- χ(2) kernel outperforms the more popular radial basis function kernel in all cases. Furthermore, combining surface electromyography and accelerometry in a multimodal classifier results in significant increases in accuracy as compared to when either modality is used individually. Since window-based classification accuracy should not be considered in isolation to estimate prosthetic controllability, we also provide results in terms of classification mistakes and prediction delay. To this extent, we propose the movement error rate as an alternative to the standard window-based accuracy. This error rate is insensitive to prediction delays and it allows us therefore to quantify mistakes and delays as independent performance characteristics. This type of analysis confirms that the inclusion of accelerometry is superior, as it results in fewer mistakes while at the same time reducing prediction delay.

Entities:  

Mesh:

Year:  2014        PMID: 24760932     DOI: 10.1109/TNSRE.2014.2303394

Source DB:  PubMed          Journal:  IEEE Trans Neural Syst Rehabil Eng        ISSN: 1534-4320            Impact factor:   3.802


  22 in total

1.  Electromyography data for non-invasive naturally-controlled robotic hand prostheses.

Authors:  Manfredo Atzori; Arjan Gijsberts; Claudio Castellini; Barbara Caputo; Anne-Gabrielle Mittaz Hager; Simone Elsig; Giorgio Giatsidis; Franco Bassetto; Henning Müller
Journal:  Sci Data       Date:  2014-12-23       Impact factor: 6.444

2.  Stable myoelectric control of a hand prosthesis using non-linear incremental learning.

Authors:  Arjan Gijsberts; Rashida Bohra; David Sierra González; Alexander Werner; Markus Nowak; Barbara Caputo; Maximo A Roa; Claudio Castellini
Journal:  Front Neurorobot       Date:  2014-02-25       Impact factor: 2.650

3.  An Electromyographic-driven Musculoskeletal Torque Model using Neuro-Fuzzy System Identification: A Case Study.

Authors:  Zohreh Jafari; Mehdi Edrisi; Hamid Reza Marateb
Journal:  J Med Signals Sens       Date:  2014-10

Review 4.  Continuous Recognition of Multifunctional Finger and Wrist Movements in Amputee Subjects Based on sEMG and Accelerometry.

Authors:  Junhong Liu; Wanzhong Chen; Mingyang Li; Xiaotao Kang
Journal:  Open Biomed Eng J       Date:  2016-11-30

5.  Proportional estimation of finger movements from high-density surface electromyography.

Authors:  Nicolò Celadon; Strahinja Došen; Iris Binder; Paolo Ariano; Dario Farina
Journal:  J Neuroeng Rehabil       Date:  2016-08-04       Impact factor: 4.262

6.  Improved prosthetic hand control with concurrent use of myoelectric and inertial measurements.

Authors:  Agamemnon Krasoulis; Iris Kyranou; Mustapha Suphi Erden; Kianoush Nazarpour; Sethu Vijayakumar
Journal:  J Neuroeng Rehabil       Date:  2017-07-11       Impact factor: 4.262

7.  Simultaneous Force Regression and Movement Classification of Fingers via Surface EMG within a Unified Bayesian Framework.

Authors:  Tara Baldacchino; William R Jacobs; Sean R Anderson; Keith Worden; Jennifer Rowson
Journal:  Front Bioeng Biotechnol       Date:  2018-02-26

Review 8.  Control Capabilities of Myoelectric Robotic Prostheses by Hand Amputees: A Scientific Research and Market Overview.

Authors:  Manfredo Atzori; Henning Müller
Journal:  Front Syst Neurosci       Date:  2015-11-30

9.  Deep Learning with Convolutional Neural Networks Applied to Electromyography Data: A Resource for the Classification of Movements for Prosthetic Hands.

Authors:  Manfredo Atzori; Matteo Cognolato; Henning Müller
Journal:  Front Neurorobot       Date:  2016-09-07       Impact factor: 2.650

10.  Artificial neural network EMG classifier for functional hand grasp movements prediction.

Authors:  Marta Gandolla; Simona Ferrante; Giancarlo Ferrigno; Davide Baldassini; Franco Molteni; Eleonora Guanziroli; Michele Cotti Cottini; Carlo Seneci; Alessandra Pedrocchi
Journal:  J Int Med Res       Date:  2016-09-27       Impact factor: 1.671

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.