Author:
Braun Jan-Matthias,Fauth Michael,Berger Michael,Huang Nan-Sheng,Simeoni Ezequiel,Gaeta Eugenio,Rodrigues do Carmo Ricardo,García-Betances Rebeca I.,Arredondo Waldmeyer María Teresa,Gail Alexander,Larsen Jørgen C.,Manoonpong Poramate,Tetzlaff Christian,Wörgötter Florentin
Abstract
AbstractBrain machine interfaces (BMIs) can substantially improve the quality of life of elderly or disabled people. However, performing complex action sequences with a BMI system is onerous because it requires issuing commands sequentially. Fundamentally different from this, we have designed a BMI system that reads out mental planning activity and issues commands in a proactive manner. To demonstrate this, we recorded brain activity from freely-moving monkeys performing an instructed task and decoded it with an energy-efficient, small and mobile field-programmable gate array hardware decoder triggering real-time action execution on smart devices. Core of this is an adaptive decoding algorithm that can compensate for the day-by-day neuronal signal fluctuations with minimal re-calibration effort. We show that open-loop planning-ahead control is possible using signals from primary and pre-motor areas leading to significant time-gain in the execution of action sequences. This novel approach provides, thus, a stepping stone towards improved and more humane control of different smart environments with mobile brain machine interfaces.
Funder
Horizon 2020 Framework Programme
Publisher
Springer Science and Business Media LLC
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