mne.io.read_raw_eeglab#
- mne.io.read_raw_eeglab(input_fname, eog=(), preload=False, uint16_codec=None, montage_units='auto', verbose=None) RawEEGLAB [source]#
Read an EEGLAB .set file.
- Parameters:
- input_fnamepath-like
Path to the
.set
file. If the data is stored in a separate.fdt
file, it is expected to be in the same folder as the.set
file.- eog
list
|tuple
|'auto'
Names or indices of channels that should be designated EOG channels. If ‘auto’, the channel names containing
EOG
orEYE
are used. Defaults to empty tuple.- preloadbool or
str
(defaultFalse
) Preload data into memory for data manipulation and faster indexing. If True, the data will be preloaded into memory (fast, requires large amount of memory). If preload is a string, preload is the file name of a memory-mapped file which is used to store the data on the hard drive (slower, requires less memory). Note that
preload=False
will be effective only if the data is stored in a separate binary file.- uint16_codec
str
|None
If your set file contains non-ascii characters, sometimes reading it may fail and give rise to error message stating that “buffer is too small”.
uint16_codec
allows to specify what codec (for example: ‘latin1’ or ‘utf-8’) should be used when reading character arrays and can therefore help you solve this problem.- montage_units
str
Units that channel positions are represented in. Defaults to “mm” (millimeters), but can be any prefix + “m” combination (including just “m” for meters).
New in v1.3.
Changed in version 1.6: Support for
'auto'
was added and is the new default.- verbosebool |
str
|int
|None
Control verbosity of the logging output. If
None
, use the default verbosity level. See the logging documentation andmne.verbose()
for details. Should only be passed as a keyword argument.
- Returns:
- rawinstance of
RawEEGLAB
A Raw object containing EEGLAB .set data. See
mne.io.Raw
for documentation of attributes and methods.
- rawinstance of
See also
mne.io.Raw
Documentation of attributes and methods of RawEEGLAB.
Notes
New in v0.11.0.
Examples using mne.io.read_raw_eeglab
#
Plot single trial activity, grouped by ROI and sorted by RT