Nemzeti Gyógyszerkutatási és Fejlesztési Laboratórium (PharmaLab)(RRF-2.3.1-21-2022-00015)
Támogató: NKFIH
Szakterületek:
Ember-gép interfészek
Gépi tanulás, statisztikus adatfeldolgozás, jelfeldolgozáson alapuló alkalmazások
(pl. beszéd, kép, videó)
Műszaki és technológiai tudományok
Orvostechnikai műszaki tudományok és technológia
Villamosmérnöki és informatikai tudományok
Background/Objectives: Accurately classifying Electroencephalography (EEG) signals
is essential for the effective operation of Brain-Computer Interfaces (BCI), which
is needed for reliable neurorehabilitation applications. However, many factors in
the processing pipeline can influence classification performance. The objective of
this study is to assess the effects of different processing steps on classification
accuracy in EEG-based BCI systems. Methods: This study explores the impact of various
processing techniques and stages, including the FASTER algorithm for artifact rejection
(AR), frequency filtering, transfer learning, and cropped training. The Physionet
dataset, consisting of four motor imagery classes, was used as input due to its relatively
large number of subjects. The raw EEG was tested with EEGNet and Shallow ConvNet.
To examine the impact of adding a spatial dimension to the input data, we also used
the Multi-branch Conv3D Net and developed two new models, Conv2D Net and Conv3D Net.
Results: Our analysis showed that classification accuracy can be affected by many
factors at every stage. Applying the AR method, for instance, can either enhance or
degrade classification performance, depending on the subject and the specific network
architecture. Transfer learning was effective in improving the performance of all
networks for both raw and artifact-rejected data. However, the improvement in classification
accuracy for artifact-rejected data was less pronounced compared to unfiltered data,
resulting in reduced precision. For instance, the best classifier achieved 46.1% accuracy
on unfiltered data, which increased to 63.5% with transfer learning. In the filtered
case, accuracy rose from 45.5% to only 55.9% when transfer learning was applied. An
unexpected outcome regarding frequency filtering was observed: networks demonstrated
better classification performance when focusing on lower-frequency components. Higher
frequency ranges were more discriminative for EEGNet and Shallow ConvNet, but only
when cropped training was applied. Conclusions: The findings of this study highlight
the complex interaction between processing techniques and neural network performance,
emphasizing the necessity for customized processing approaches tailored to specific
subjects and network architectures.