Matches in SemOpenAlex for { <https://semopenalex.org/work/W4221131057> ?p ?o ?g. }
- W4221131057 abstract "Abstract Deep learning-based brain-computer interface (BCI) in motor imagery (MI) has emerged as a powerful method for establishing direct communication between the brain and external electronic devices. However, due to inter-subject variability, inherent complex properties, and low signal-to-noise ratio (SNR) in electroencephalogram (EEG) signal are major challenges that significantly hinders the accuracy of the MI classifier. To overcome this, the present work proposes an efficient transfer learning-based multi-scale feature fused CNN (MSFFCNN) which can capture the distinguishable features of various non-overlapping canonical frequency bands of EEG signals from different convolutional scales for multi-class MI classification. In order to account for inter-subject variability from different subjects, the current work presents 4 different model variants including subject-independent and subject-adaptive classification models considering different adaptation configurations to exploit the full learning capacity of the classifier. Each adaptation configuration has been fine-tuned in an extensively trained pre-trained model and the performance of the classifier has been studied for vast range of learning rates and degrees of adaptation which illustrates the advantages of using an adaptive transfer learning-based model. The model achieves an average classification accuracy of 94.06% (±2.29%) and kappa value of 0.88 outperforming several baseline and current state-of-the-art EEG-based MI classification models with fewer training samples. The present research provides an effective and efficient transfer learning-based end-to-end MI classification framework for designing a high-performance robust MI-BCI system." @default.
- W4221131057 created "2022-04-03" @default.
- W4221131057 creator A5087514009 @default.
- W4221131057 date "2022-03-19" @default.
- W4221131057 modified "2023-10-16" @default.
- W4221131057 title "A multi-scale fusion CNN model based on adaptive transfer learning for multi-class MI-classification in BCI system" @default.
- W4221131057 cites W1967167074 @default.
- W4221131057 cites W2010371409 @default.
- W4221131057 cites W2020253000 @default.
- W4221131057 cites W2030504055 @default.
- W4221131057 cites W2037671369 @default.
- W4221131057 cites W2076346683 @default.
- W4221131057 cites W2078087619 @default.
- W4221131057 cites W2089990378 @default.
- W4221131057 cites W2126224881 @default.
- W4221131057 cites W2136008138 @default.
- W4221131057 cites W2183603928 @default.
- W4221131057 cites W2216607127 @default.
- W4221131057 cites W2511907357 @default.
- W4221131057 cites W2548703973 @default.
- W4221131057 cites W2602159426 @default.
- W4221131057 cites W2741907166 @default.
- W4221131057 cites W2767333869 @default.
- W4221131057 cites W2792724009 @default.
- W4221131057 cites W2794208198 @default.
- W4221131057 cites W2794850264 @default.
- W4221131057 cites W2888355470 @default.
- W4221131057 cites W2892832231 @default.
- W4221131057 cites W2900786131 @default.
- W4221131057 cites W2900802277 @default.
- W4221131057 cites W2902034646 @default.
- W4221131057 cites W2906965193 @default.
- W4221131057 cites W2910202311 @default.
- W4221131057 cites W2911312349 @default.
- W4221131057 cites W2915330174 @default.
- W4221131057 cites W2939344111 @default.
- W4221131057 cites W2963283402 @default.
- W4221131057 cites W2963287333 @default.
- W4221131057 cites W2968094935 @default.
- W4221131057 cites W2971075653 @default.
- W4221131057 cites W2971518519 @default.
- W4221131057 cites W2974596145 @default.
- W4221131057 cites W3004827935 @default.
- W4221131057 cites W3013691153 @default.
- W4221131057 cites W3019839791 @default.
- W4221131057 cites W3022544857 @default.
- W4221131057 cites W3033186461 @default.
- W4221131057 cites W3035770885 @default.
- W4221131057 cites W3045548098 @default.
- W4221131057 cites W3080222908 @default.
- W4221131057 cites W3100777112 @default.
- W4221131057 cites W3110151578 @default.
- W4221131057 cites W3115305254 @default.
- W4221131057 cites W3119643368 @default.
- W4221131057 cites W3124617164 @default.
- W4221131057 cites W3126287844 @default.
- W4221131057 cites W3131386387 @default.
- W4221131057 cites W3136666282 @default.
- W4221131057 cites W3137854914 @default.
- W4221131057 cites W3158301824 @default.
- W4221131057 cites W3162296831 @default.
- W4221131057 cites W3193603015 @default.
- W4221131057 cites W3215432868 @default.
- W4221131057 cites W4200532932 @default.
- W4221131057 cites W4205414100 @default.
- W4221131057 cites W4206720985 @default.
- W4221131057 cites W4206927580 @default.
- W4221131057 doi "https://doi.org/10.1101/2022.03.17.481909" @default.
- W4221131057 hasPublicationYear "2022" @default.
- W4221131057 type Work @default.
- W4221131057 citedByCount "5" @default.
- W4221131057 countsByYear W42211310572022 @default.
- W4221131057 countsByYear W42211310572023 @default.
- W4221131057 crossrefType "posted-content" @default.
- W4221131057 hasAuthorship W4221131057A5087514009 @default.
- W4221131057 hasBestOaLocation W42211310571 @default.
- W4221131057 hasConcept C118552586 @default.
- W4221131057 hasConcept C119857082 @default.
- W4221131057 hasConcept C150899416 @default.
- W4221131057 hasConcept C153180895 @default.
- W4221131057 hasConcept C154945302 @default.
- W4221131057 hasConcept C15744967 @default.
- W4221131057 hasConcept C165696696 @default.
- W4221131057 hasConcept C173201364 @default.
- W4221131057 hasConcept C38652104 @default.
- W4221131057 hasConcept C41008148 @default.
- W4221131057 hasConcept C522805319 @default.
- W4221131057 hasConcept C81363708 @default.
- W4221131057 hasConcept C95623464 @default.
- W4221131057 hasConceptScore W4221131057C118552586 @default.
- W4221131057 hasConceptScore W4221131057C119857082 @default.
- W4221131057 hasConceptScore W4221131057C150899416 @default.
- W4221131057 hasConceptScore W4221131057C153180895 @default.
- W4221131057 hasConceptScore W4221131057C154945302 @default.
- W4221131057 hasConceptScore W4221131057C15744967 @default.
- W4221131057 hasConceptScore W4221131057C165696696 @default.
- W4221131057 hasConceptScore W4221131057C173201364 @default.
- W4221131057 hasConceptScore W4221131057C38652104 @default.
- W4221131057 hasConceptScore W4221131057C41008148 @default.
- W4221131057 hasConceptScore W4221131057C522805319 @default.