Universal Joint Feature Extraction for P300 EEG Classification Using Multi-Task Autoencoder
Apiwat Ditthapron(Worcester Polytechnic Institute), Theerawit Wilaiprasitporn(Vidyasirimedhi Institute of Science and Technology), Nannapas Banluesombatkul(Vidyasirimedhi Institute of Science and Technology), Ekapol Chuangsuwanich(Chulalongkorn University), Sombat Ketrat(Vidyasirimedhi Institute of Science and Technology)
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