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Motor Imagery Classification Using Sparse Representations: an Exploratory Study

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Journal Sci Rep
Specialty Science
Date 2023 Sep 21
PMID 37731038
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Abstract

The non-stationary nature of the EEG signal poses challenges for the classification of motor imagery. sparse representation classification (SRC) appears as an alternative for classification of untrained conditions and, therefore, useful in motor imagery. Empirical mode decomposition (EMD) deals with signals of this nature and appears at the rear of the classification, supporting the generation of features. In this work we evaluate the combination of these methods in a multiclass classification problem, comparing them with a conventional method in order to determine if their performance is regular. For comparison with SRC we use multilayer perceptron (MLP). We also evaluated a hybrid approach for classification of sparse representations with MLP (RSMLP). For comparison with EMD we used filtering by frequency bands. Feature selection methods were used to select the most significant ones, specifically Random Forest and Particle Swarm Optimization. Finally, we used data augmentation to get a more voluminous base. Regarding the first dataset, we observed that the classifiers that use sparse representation have results equivalent to each other, but they outperform the conventional MLP model. SRC and SRMLP achieve an average accuracy of [Formula: see text] and [Formula: see text] respectively while the MLP is [Formula: see text], representing a gain between [Formula: see text] and [Formula: see text]. The use of EMD in relation to other feature processing techniques is not superior. However, EMD does not influence negatively, there is an opportunity for improvement. Finally, the use of data augmentation proved to be important to obtain relevant results. In the second dataset, we did not observe the same results. Models based on sparse representation (SRC, SRMLP, etc.) have on average a performance close to other conventional models, but without surpassing them. The best sparse models achieve an average accuracy of [Formula: see text] among the subjects in the base, while other model reach [Formula: see text]. The improvement of self-adaptive mechanisms that respond efficiently to the user's context is a good way to achieve improvements in motor imagery applications. However, other scenarios should be investigated, since the advantage of these methods was not proven in all datasets studied. There is still room for improvement, such as optimizing the dictionary of sparse representation in the context of motor imagery. Investing efforts in synthetically increasing the training base has also proved important to reduce the costs of this group of applications.

References
1.
Jiao Y, Zhang Y, Chen X, Yin E, Jin J, Wang X . Sparse Group Representation Model for Motor Imagery EEG Classification. IEEE J Biomed Health Inform. 2018; 23(2):631-641. DOI: 10.1109/JBHI.2018.2832538. View

2.
Zhu Q, Samanta A, Li B, Rudd R, Frolov T . Predicting phase behavior of grain boundaries with evolutionary search and machine learning. Nat Commun. 2018; 9(1):467. PMC: 5794988. DOI: 10.1038/s41467-018-02937-2. View

3.
Peng H, Lin W, Cai G, Huang S, Pei Y, Ma T . DW-FBCSP: EEG emotion recognition algorithm based on scale distance weighted optimization. Annu Int Conf IEEE Eng Med Biol Soc. 2021; 2021:430-433. DOI: 10.1109/EMBC46164.2021.9629850. View

4.
Borghi P, Zakordonets O, Teixeira J . A COVID-19 time series forecasting model based on MLP ANN. Procedia Comput Sci. 2021; 181:940-947. PMC: 8076817. DOI: 10.1016/j.procs.2021.01.250. View

5.
Betthauser J, Hunt C, Osborn L, Masters M, Levay G, Kaliki R . Limb Position Tolerant Pattern Recognition for Myoelectric Prosthesis Control with Adaptive Sparse Representations From Extreme Learning. IEEE Trans Biomed Eng. 2017; 65(4):770-778. PMC: 5926206. DOI: 10.1109/TBME.2017.2719400. View