Alapfogalmak
Brain-computer interface technology using EEG signals for fine motor imagery classification.
Statisztikák
FingerNet의 평균 정확도는 0.3049이며, EEGNet 및 DeepConvNet의 정확도는 각각 0.2196 및 0.2533입니다.
Idézetek
"FingerNet demonstrated dominant performance compared to the conventional baseline models."
"Weighted cross-entropy has broader applicability and relevance across various domains involving multi-class classification tasks."