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Decoding of motor imagery movements from EEG signals using SpiNNaker neuromorphic hardware
2017
2017 8th International IEEE/EMBS Conference on Neural Engineering (NER)
Non-invasive brain machine interfaces (BMIs) on motor imagery movements have been widely studied and used for many years to take advantage of the intuitive link between imagined motor tasks and natural actions. En route to future technical applications of neuromorphic computing, a major current challenge lies in the identification and implementation of brain inspired algorithms to decode recorded signals. Neuromorphic computing is believed to allow real-time implementation of large scale
doi:10.1109/ner.2017.8008341
dblp:conf/ner/TayebEC17
fatcat:ofosj6dla5b4batzywhusepqz4