mne.filter.filter_data#
- mne.filter.filter_data(data, sfreq, l_freq, h_freq, picks=None, filter_length='auto', l_trans_bandwidth='auto', h_trans_bandwidth='auto', n_jobs=1, method='fir', iir_params=None, copy=True, phase='zero', fir_window='hamming', fir_design='firwin', pad='reflect_limited', verbose=None)[source]#
Filter a subset of channels.
- Parameters
- data
ndarray, shape (…, n_times) The data to filter.
- sfreq
float The sample frequency in Hz.
- l_freq
float|None For FIR filters, the lower pass-band edge; for IIR filters, the lower cutoff frequency. If None the data are only low-passed.
- h_freq
float|None For FIR filters, the upper pass-band edge; for IIR filters, the upper cutoff frequency. If None the data are only high-passed.
- picks
list|slice|None Channels to include. Slices and lists of integers will be interpreted as channel indices. None (default) will pick all channels. Note that channels in
info['bads']will be included if their indices are explicitly provided. Currently this is only supported for 2D (n_channels, n_times) and 3D (n_epochs, n_channels, n_times) arrays.- filter_length
str|int Length of the FIR filter to use (if applicable):
‘auto’ (default): The filter length is chosen based on the size of the transition regions (6.6 times the reciprocal of the shortest transition band for fir_window=’hamming’ and fir_design=”firwin2”, and half that for “firwin”).
str: A human-readable time in units of “s” or “ms” (e.g., “10s” or “5500ms”) will be converted to that number of samples if
phase="zero", or the shortest power-of-two length at least that duration forphase="zero-double".int: Specified length in samples. For fir_design=”firwin”, this should not be used.
- l_trans_bandwidth
float|str Width of the transition band at the low cut-off frequency in Hz (high pass or cutoff 1 in bandpass). Can be “auto” (default) to use a multiple of
l_freq:min(max(l_freq * 0.25, 2), l_freq)
Only used for
method='fir'.- h_trans_bandwidth
float|str Width of the transition band at the high cut-off frequency in Hz (low pass or cutoff 2 in bandpass). Can be “auto” (default in 0.14) to use a multiple of
h_freq:min(max(h_freq * 0.25, 2.), info['sfreq'] / 2. - h_freq)
Only used for
method='fir'.- n_jobs
int|str Number of jobs to run in parallel. Can be ‘cuda’ if
cupyis installed properly and method=’fir’.- method
str ‘fir’ will use overlap-add FIR filtering, ‘iir’ will use IIR forward-backward filtering (via filtfilt).
- iir_params
dict|None Dictionary of parameters to use for IIR filtering. If iir_params is None and method=”iir”, 4th order Butterworth will be used. For more information, see
mne.filter.construct_iir_filter().- copybool
If True, a copy of x, filtered, is returned. Otherwise, it operates on x in place.
- phase
str Phase of the filter, only used if
method='fir'. Symmetric linear-phase FIR filters are constructed, and ifphase='zero'(default), the delay of this filter is compensated for, making it non-causal. Ifphase='zero-double', then this filter is applied twice, once forward, and once backward (also making it non-causal). If'minimum', then a minimum-phase filter will be constricted and applied, which is causal but has weaker stop-band suppression.New in version 0.13.
- fir_window
str The window to use in FIR design, can be “hamming” (default), “hann” (default in 0.13), or “blackman”.
New in version 0.15.
- fir_design
str Can be “firwin” (default) to use
scipy.signal.firwin(), or “firwin2” to usescipy.signal.firwin2(). “firwin” uses a time-domain design technique that generally gives improved attenuation using fewer samples than “firwin2”.New in version 0.15.
- pad
str The type of padding to use. Supports all
numpy.pad()modeoptions. Can also be"reflect_limited", which pads with a reflected version of each vector mirrored on the first and last values of the vector, followed by zeros.Only used for
method='fir'. The default is'reflect_limited'.New in version 0.15.
- 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.
- data
- Returns
- data
ndarray, shape (…, n_times) The filtered data.
- data
Notes
Applies a zero-phase low-pass, high-pass, band-pass, or band-stop filter to the channels selected by
picks.l_freqandh_freqare the frequencies below which and above which, respectively, to filter out of the data. Thus the uses are:l_freq < h_freq: band-pass filterl_freq > h_freq: band-stop filterl_freq is not None and h_freq is None: high-pass filterl_freq is None and h_freq is not None: low-pass filter
Note
If n_jobs > 1, more memory is required as
len(picks) * n_timesadditional time points need to be temporaily stored in memory.For more information, see the tutorials Background information on filtering and Filtering and resampling data and
mne.filter.create_filter().