Inicio  /  Future Internet  /  Vol: 13 Par: 5 (2021)  /  Artículo
ARTÍCULO
TITULO

Deep Learning-Based Classification of Fine Hand Movements from Low Frequency EEG

Giulia Bressan    
Giulia Cisotto    
Gernot R. Müller-Putz and Selina Christin Wriessnegger    

Resumen

The classification of different fine hand movements from electroencephalogram (EEG) signals represents a relevant research challenge, e.g., in BCI applications for motor rehabilitation. Here, we analyzed two different datasets where fine hand movements (touch, grasp, palmar, and lateral grasp) were performed in a self-paced modality. We trained and tested a newly proposed CNN, and we compared its classification performance with two well-established machine learning models, namely, shrinkage-linear discriminant analysis (LDA) and Random Forest (RF). Compared to previous literature, we included neuroscientific evidence, and we trained our Convolutional Neural Network (CNN) model on the so-called movement-related cortical potentials (MRCPs). They are EEG amplitude modulations at low frequencies, i.e., (0.3,3)" role="presentation">(0.3,3)(0.3,3) ( 0.3 , 3 ) Hz that have been proved to encode several properties of the movements, e.g., type of grasp, force level, and speed. We showed that CNN achieved good performance in both datasets (accuracy of 0.70±0.11" role="presentation">0.70±0.110.70±0.11 0.70 ± 0.11 and 0.64±0.10" role="presentation">0.64±0.100.64±0.10 0.64 ± 0.10 , for the two datasets, respectively), and they were similar or superior to the baseline models (accuracy of 0.68±0.10" role="presentation">0.68±0.100.68±0.10 0.68 ± 0.10 and 0.62±0.07" role="presentation">0.62±0.070.62±0.07 0.62 ± 0.07 with sLDA; accuracy of 0.70±0.15" role="presentation">0.70±0.150.70±0.15 0.70 ± 0.15 and 0.61±0.07" role="presentation">0.61±0.070.61±0.07 0.61 ± 0.07 with RF, with comparable performance in precision and recall). In addition, compared to the baseline, our CNN requires a faster pre-processing procedure, paving the way for its possible use in online BCI applications.

Palabras claves

EEG -  MRCP -  CNN -  RF -  LDA -  BCI -  hand -  grasping -  palmar grasp -  lateral grasp

 Artículos similares

       
 
Jianlong Ye, Hongchuan Yu, Gaoyang Liu, Jiong Zhou and Jiangpeng Shu    
Component identification and depth estimation are important for detecting the integrity of post-disaster structures. However, traditional manual methods might be time-consuming, labor-intensive, and influenced by subjective judgments of inspectors. Deep-... ver más
Revista: Buildings

 
Minghao Liu, Qingxi Luo, Jianxiang Wang, Lingbo Sun, Tingting Xu and Enming Wang    
Land use/cover change (LUCC) refers to the phenomenon of changes in the Earth?s surface over time. Accurate prediction of LUCC is crucial for guiding policy formulation and resource management, contributing to the sustainable use of land, and maintaining... ver más

 
Ching-Lung Fan    
The emergence of deep learning-based classification methods has led to considerable advancements and remarkable performance in image recognition. This study introduces the Multiscale Feature Convolutional Neural Network (MSFCNN) for the extraction of com... ver más

 
Yuhwan Kim, Chang-Ho Choi, Chang-Young Park and Seonghyun Park    
In today?s society, where people spend over 90% of their time indoors, indoor air quality (IAQ) is crucial for sustaining human life. However, as various indoor activities such as cooking generate diverse types of pollutants in indoor spaces, IAQ has eme... ver más
Revista: Buildings

 
Mingyang Yu, Haiqing Xu, Fangliang Zhou, Shuai Xu and Hongling Yin    
Accurate and efficient classification maps of urban functional zones (UFZs) are crucial to urban planning, management, and decision making. Due to the complex socioeconomic UFZ properties, it is increasingly challenging to identify urban functional zones... ver más