- Encountered performance bottlenecks when running BCI paradigms in Python in real time. Overcame somewhat by using specific data structures such as trees
- Had to use Muse 2014
- multi-class motor classification seds estimation approach ? Ran into trouble with source localization using Muse (figures). Found paper using 8 channel EEG to classify hand gestures based on spectral data (freiburg)
- With P300 speller, encountered significant marker variability that messed up ERP detection.
- Signal quality issues with motor imagery task (muse?)
- Implemented flanker test on Android w/ Muse
- Looked for alpha and beta suppression in order to evaluate ADD
- Hard hard time making app "stable"
- Looks like native Android app
- Used muse-io and Unity
- Sent EEG and EMG data from Unity over UDP to a python script to communicate with RP PI
- Open source on GitHub
- Tried to build a robotic arm to move right or left depending on motor imagery
- GitHub for technical overview and code
- Merlin blog and Github for info
- Moving to support OpenBCI as well