Litcius/Paper detail

A hybrid brain-computer interface using motor imagery and SSVEP Based on convolutional neural network

Wenwei Luo, Wanguang Yin, Quanying Liu, Youzhi Qu

2023Brain-Apparatus Communication A Journal of Bacomics16 citationsDOIOpen Access PDF

Abstract

The key to electroencephalography (EEG)-based brain-computer interface (BCI) lies in neural decoding, and its accuracy can be improved by using hybrid BCI paradigms, that is, fusing multiple paradigms.However, hybrid BCIs usually require separate processing processes for EEG signals in each paradigm, which greatly reduces the efficiency of EEG feature extraction and the generalizability of the model.Here, we propose a two-stream convolutional neural network (TSCNN) based hybrid brain-computer interface.It combines steady-state visual evoked potential (SSVEP) and motor imagery (MI) paradigms.TSCNN automatically learns to extract EEG features in the two paradigms in the training process and improves the decoding accuracy by 25.4% compared with the MI mode, and 2.6% compared with SSVEP mode in the test data.Moreover, the versatility of TSCNN is verified as it provides considerable performance in both single-mode (70.2% for MI, 93.0% for SSVEP) and hybrid-mode scenarios (95.6% for MI-SSVEP hybrid).Our work will facilitate the real-world applications of EEG-based BCI systems.

Topics & Concepts

Brain–computer interfaceComputer scienceMotor imageryConvolutional neural networkElectroencephalographyInterface (matter)Artificial intelligenceDecoding methodsFeature extractionPattern recognition (psychology)Speech recognitionNeuroscienceAlgorithmPsychologyMaximum bubble pressure methodParallel computingBubbleEEG and Brain-Computer InterfacesAdvanced Memory and Neural ComputingNeuroscience and Neural Engineering