Artículos en publicación periódica indizada
Embedded brain machine interface based on motor imagery paradigm to control prosthetic hand
Brain Machine Interfaces (BMI) have been developed as an alternative way to decode brain signals into control commands and communication devices. A typical BMI uses a computer to process EEG signals; however, current embedded PCs have enough computational resources for fully embedded BMI systems. In this work, the performance of the Odroid-xu4 embedded PC is evaluated as a processing and control device for BMI based on a 2-class motor imagery paradigm. Results show the best accuracy (82.1%) using SVM classifier and minimal processing times (0.11s) on the embedded device, which allows the development of a portable, low cost and trustworthy system.
Autor(es):
K. Acuña Condori, E. Carranza Urquizo, D. Achanccaray Diaz
Año: 2016
Título de la revista: Andean Council International Conference (ANDESCON)
Ciudad: Arequipa, Perú