示例#1
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def make_interpolators(interp_cache, keys, bads, epochs):
    make = [k for k in keys if (bads, k) not in interp_cache]
    logger = logging.getLogger(__name__)
    logger.debug("Making %i of %i interpolators" % (len(make), len(keys)))
    for key in make:
        picks_good = pick_types(epochs.info, ref_meg=False, exclude=key)
        picks_bad = pick_channels(epochs.ch_names, key)
        interpolation = map_meg_channels(epochs, picks_good, picks_bad, 'accurate')
        interp_cache[bads, key] = picks_good, picks_bad, interpolation
示例#2
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def make_interpolators(interp_cache, keys, bads, epochs):
    make = [k for k in keys if (bads, k) not in interp_cache]
    logger = logging.getLogger(__name__)
    logger.debug("Making %i of %i interpolators" % (len(make), len(keys)))
    for key in make:
        picks_good = pick_types(epochs.info, ref_meg=False, exclude=key)
        picks_bad = pick_channels(epochs.ch_names, key)
        interpolation = map_meg_channels(epochs, picks_good, picks_bad, 'accurate')
        interp_cache[bads, key] = picks_good, picks_bad, interpolation
示例#3
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def _interpolate_bads_meg(inst, mode='accurate', origin=None, verbose=None):
    """Interpolate bad channels from data in good channels.

    Parameters
    ----------
    inst : mne.io.Raw, mne.Epochs or mne.Evoked
        The data to interpolate. Must be preloaded.
    mode : str
        Either `'accurate'` or `'fast'`, determines the quality of the
        Legendre polynomial expansion used for interpolation. `'fast'` should
        be sufficient for most applications.
    origin : None | list
        If None, origin is set to sensor center of mass, otherwise use the
        coordinates provided as origin. The old standard value is (0., 0., 0.04)
    verbose : bool, str, int, or None
        If not None, override default verbose level (see :func:`mne.verbose`
        and :ref:`Logging documentation <tut_logging>` for more).
    """
    from mne.channels.interpolation import _do_interp_dots

    picks_meg = pick_types(inst.info, meg=True, eeg=False, exclude=[])
    picks_good = pick_types(inst.info, meg=True, eeg=False, exclude='bads')
    meg_ch_names = [inst.info['ch_names'][p] for p in picks_meg]
    bads_meg = [ch for ch in inst.info['bads'] if ch in meg_ch_names]

    # select the bad meg channel to be interpolated
    if len(bads_meg) == 0:
        picks_bad = []
    else:
        picks_bad = pick_channels(inst.info['ch_names'], bads_meg, exclude=[])

    # return without doing anything if there are no meg channels
    if len(picks_meg) == 0 or len(picks_bad) == 0:
        return
    info_from = pick_info(inst.info, picks_good)
    info_to = pick_info(inst.info, picks_bad)

    if check_version('mne', min_version='0.21'):
        from mne.forward import _map_meg_or_eeg_channels
        mapping = _map_meg_or_eeg_channels(info_from,
                                           info_to,
                                           mode=mode,
                                           origin=origin)
    else:
        from mne.forward import _map_meg_channels
        mapping = _map_meg_channels(info_from,
                                    info_to,
                                    mode=mode,
                                    origin=origin)

    _do_interp_dots(inst, mapping, picks_good, picks_bad)
示例#4
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    def apply(self, inst):
        """Apply the operator

        Parameters
        ----------
        inst : instance of Raw
            The data on which to apply the operator.

        Returns
        -------
        inst : instance of Raw
            The input instance with cleaned data (operates inplace).
        """
        if isinstance(inst, BaseRaw):
            if not inst.preload:
                raise RuntimeError('raw data must be loaded, use '
                                   'raw.load_data() or preload=True')
            offsets = np.concatenate(
                [np.arange(0, len(inst.times), 10000), [len(inst.times)]])
            info = inst.info
            picks = pick_channels(info['ch_names'], self._used_chs)
            data_chs = [
                info['ch_names'][pick]
                for pick in _pick_data_channels(info, exclude=())
            ]
            missing = set(data_chs) - set(self._used_chs)
            if len(missing) > 0:
                raise RuntimeError('Not all data channels of inst were used '
                                   'to construct the operator: %s' %
                                   sorted(missing))
            missing = set(self._used_chs) - set(info['ch_names'][pick]
                                                for pick in picks)
            if len(missing) > 0:
                raise RuntimeError('Not all channels originally used to '
                                   'construct the operator are present: %s' %
                                   sorted(missing))
            for start, stop in zip(offsets[:-1], offsets[1:]):
                time_sl = slice(start, stop)
                inst._data[picks, time_sl] = np.dot(self._operator,
                                                    inst._data[picks, time_sl])
        else:
            # XXX Eventually this could support Evoked and Epochs, too
            raise TypeError('Only Raw instances are currently supported, got '
                            '%s' % type(inst))
        return inst
示例#5
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def pick_channels_connectivity(csd,
                               include=[],
                               exclude=[],
                               ordered=False,
                               copy=True):
    """Pick channels from connectivity matrix.
    Parameters
    ----------
    csd : instance of ResultConnectivity
        The Result object to select the channels from.
    include : list of str
        List of channels to include (if empty, include all available).
    exclude : list of str
        Channels to exclude (if empty, do not exclude any).
    ordered : bool
        If True (default False), ensure that the order of the channels in the
        modified instance matches the order of ``include``.
        .. versionadded:: 0.20.0
    copy : bool
        If True (the default), return a copy of the CSD matrix with the
        modified channels. If False, channels are modified in-place.
        .. versionadded:: 0.20.0
    Returns
    -------
    res : instance of CrossSpectralDensity
        Cross-spectral density restricted to selected channels.
    """
    if copy:
        csd = csd.copy()

    sel = pick_channels(csd.ch_names,
                        include=include,
                        exclude=exclude,
                        ordered=ordered)
    data = []
    for vec in csd._data.T:
        mat = _vector_to_sym_mat(vec)
        mat = mat[sel, :][:, sel]
        data.append(_sym_mat_to_vector(mat))
    ch_names = [csd.ch_names[i] for i in sel]

    csd._data = np.array(data).T
    csd.ch_names = ch_names
    return csd
示例#6
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    def apply(self, inst):
        """Apply the operator

        Parameters
        ----------
        inst : instance of Raw
            The data on which to apply the operator.

        Returns
        -------
        inst : instance of Raw
            The input instance with cleaned data (operates inplace).
        """
        if isinstance(inst, BaseRaw):
            if not inst.preload:
                raise RuntimeError('raw data must be loaded, use '
                                   'raw.load_data() or preload=True')
            offsets = np.concatenate([np.arange(0, len(inst.times), 10000),
                                      [len(inst.times)]])
            info = inst.info
            picks = pick_channels(info['ch_names'], self._used_chs)
            data_chs = [info['ch_names'][pick]
                        for pick in _pick_data_channels(info, exclude=())]
            missing = set(data_chs) - set(self._used_chs)
            if len(missing) > 0:
                raise RuntimeError('Not all data channels of inst were used '
                                   'to construct the operator: %s'
                                   % sorted(missing))
            missing = set(self._used_chs) - set(info['ch_names'][pick]
                                                for pick in picks)
            if len(missing) > 0:
                raise RuntimeError('Not all channels originally used to '
                                   'construct the operator are present: %s'
                                   % sorted(missing))
            for start, stop in zip(offsets[:-1], offsets[1:]):
                time_sl = slice(start, stop)
                inst._data[picks, time_sl] = np.dot(self._operator,
                                                    inst._data[picks, time_sl])
        else:
            # XXX Eventually this could support Evoked and Epochs, too
            raise TypeError('Only Raw instances are currently supported, got '
                            '%s' % type(inst))
        return inst
示例#7
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def _interpolate_bads_meg(epochs, bad_channels_by_epoch, mode='fast'):
    """Interpolate bad MEG channels per epoch

    Parameters
    ----------
    inst : mne.io.Raw, mne.Epochs or mne.Evoked
        The data to interpolate. Must be preloaded.
    bad_channels_by_epoch : list of list of str
        Bad channel names specified for each epoch. For example, for an Epochs
        instance containing 3 epochs: ``[['F1'], [], ['F3', 'FZ']]``

    Notes
    -----
    Based on mne 0.9.0 MEG channel interpolation.
    """
    if len(bad_channels_by_epoch) != len(epochs):
        raise ValueError("Unequal length of epochs (%i) and "
                         "bad_channels_by_epoch (%i)"
                         % (len(epochs), len(bad_channels_by_epoch)))

    interp_cache = {}
    for i, bad_channels in enumerate(bad_channels_by_epoch):
        if not bad_channels:
            continue

        # find interpolation matrix
        key = tuple(sorted(bad_channels))
        if key in interp_cache:
            picks_good, picks_bad, interpolation = interp_cache[key]
        else:
            picks_good = pick_types(epochs.info, ref_meg=False, exclude=key)
            picks_bad = pick_channels(epochs.ch_names, key)
            interpolation = _map_meg_channels(epochs, picks_good, picks_bad, mode)
            interp_cache[key] = picks_good, picks_bad, interpolation

        # apply interpolation
        logger.info('Interpolating sensors %s on epoch %s', picks_bad, i)
        epochs._data[i, picks_bad, :] = interpolation.dot(epochs._data[i, picks_good, :])
def _interpolate_bads_meg(inst, mode='accurate', origin=None, verbose=None):
    """Interpolate bad channels from data in good channels.

    Parameters
    ----------
    inst : mne.io.Raw, mne.Epochs or mne.Evoked
        The data to interpolate. Must be preloaded.
    mode : str
        Either `'accurate'` or `'fast'`, determines the quality of the
        Legendre polynomial expansion used for interpolation. `'fast'` should
        be sufficient for most applications.
    origin : None | list
        If None, origin is set to sensor center of mass, otherwise use the
        coordinates provided as origin. The old standard value is (0., 0., 0.04)
    verbose : bool, str, int, or None
        If not None, override default verbose level (see :func:`mne.verbose`
        and :ref:`Logging documentation <tut_logging>` for more).
    """
    picks_meg = pick_types(inst.info, meg=True, eeg=False, exclude=[])
    picks_good = pick_types(inst.info, meg=True, eeg=False, exclude='bads')
    meg_ch_names = [inst.info['ch_names'][p] for p in picks_meg]
    bads_meg = [ch for ch in inst.info['bads'] if ch in meg_ch_names]

    # select the bad meg channel to be interpolated
    if len(bads_meg) == 0:
        picks_bad = []
    else:
        picks_bad = pick_channels(inst.info['ch_names'], bads_meg, exclude=[])

    # return without doing anything if there are no meg channels
    if len(picks_meg) == 0 or len(picks_bad) == 0:
        return
    info_from = pick_info(inst.info, picks_good)
    info_to = pick_info(inst.info, picks_bad)

    if origin is None:

        posvec = np.array([inst.info['chs'][p]['loc'][0:3] for p in picks_meg])
        norvec = np.array(
            [inst.info['chs'][p]['loc'][9:12] for p in picks_meg])
        cogpos = np.mean(posvec, axis=0)
        norsum = np.mean(norvec, axis=0)
        anorm = np.sqrt(np.dot(norsum, norsum.T))
        ndir = norsum / anorm
        # push the position slightly (4cm) away from the helmet:
        altpos = cogpos - 0.04 * ndir
        print(">_interpolate_bads_meg\\DBG> cog(sens) = [%8.5f  %8.5f  %8.5f]" % \
              (cogpos[0], cogpos[1], cogpos[2]))
        print(">_interpolate_bads_meg\\DBG> alt(sens) = [%8.5f  %8.5f  %8.5f]" % \
              (altpos[0], altpos[1], altpos[2]))
        cogposhd = apply_trans(inst.info['dev_head_t']['trans'],
                               cogpos,
                               move=True)
        altposhd = apply_trans(inst.info['dev_head_t']['trans'],
                               altpos,
                               move=True)
        print(">_interpolate_bads_meg\\DBG> cog(hdcs) = [%8.5f  %8.5f  %8.5f]" % \
              (cogposhd[0], cogposhd[1], cogposhd[2]))
        print(">_interpolate_bads_meg\\DBG> alt(hdcs) = [%8.5f  %8.5f  %8.5f]" % \
              (altposhd[0], altposhd[1], altposhd[2]))
        print(">_interpolate_bads_meg\\DBG> calling _map_meg_channels(..., origin=(%8.5f  %8.5f  %8.5f))" % \
              (altposhd[0], altposhd[1], altposhd[2]))

        origin = (altposhd[0], altposhd[1], altposhd[2])

    else:
        origin = origin

    mapping = _map_meg_channels(info_from, info_to, mode=mode, origin=origin)
    _do_interp_dots(inst, mapping, picks_good, picks_bad)