EEG Signal Processing Library
Project description
Description
BrainSurf is a Python library for processing and analyzing EEG (electroencephalography) signals. It provides a collection of tools and methods for reading, preprocessing, analyzing, and visualizing EEG data. The library is built using the NumPy, SciPy, and Matplotlib packages and is designed to be easily extensible for custom analysis and visualization needs
Installation
BrainSurf can be installed using pip, a Python package manager. To install the latest stable version of the library, run the following command :
pip install brainsurf
Github
Alternatively, you can clone the repository from GitHub and install it from source:
git clone https://github.com/preethihiremath/brainsurf
cd esp
pip install -r requirements.txt
python setup.py install
Usage
import brainsurf.io.mff as load_input
import brainsurf.utils.data as util
import brainsurf.utils.performance as performance
import brainsurf.preprocessing.filtering as filter
import brainsurf.preprocessing.artifact_removal as artifact
import brainsurf.preprocessing.epoching as epoching
#load EEG data from file
suriya_baseline = load_input.convert_mff_to_eegdata("C:/Users/Preethi V Hiremath/Downloads/Meditators/Suriya/BS.mff")
values = np.asarray(suriya_baseline['sec'], dtype=object)
sampling_freq = util.estimate_sampling_frequency(values)
pre_preprocessed_data = preprocess_eeg_data(suriya_baseline,sampling_freq)
print(performance.calculate_memory_efficiency())
performance.monitor_resource_usage()
Project details
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.