Exemplo n.º 1
0
def get_explicit_letter_intervals(
        markers='./001_trial1_right_keyboard_2020-02-16-19-09-10-309.txt',
        fname='./001_trial1_right_keyboard_OpenBCI-RAW-2020-02-16_18-59-08.txt',
        channel=[1, 2, 3, 4]):
    # load the data and find where they all are
    channel.append(13)
    channel1 = channel[:]

    lr = load_raw.load_dta(markers, fname, channel)
    key = lr[lr['keypressed'].notna()]
    keypress_indices = [key.iloc[i].name for i in range(len(key))]
    # the intervals should go from -350 till +500, it gets trimmed by chop_idx later which should be set to 250
    intervals = [(i - 600, i + 600) for i in keypress_indices]
    letters = key['keypressed'].values
    return intervals, letters
Exemplo n.º 2
0
def disp1(channel=[1, 2, 3, 4], save_as='spec1.png'):
    lr = load_raw.load_dta(channel=channel + [13])
    # trim data
    keypressed = lr['keypressed']
    start_idx = keypressed.first_valid_index()
    stop_idx = keypressed.last_valid_index()
    lr_trimmed = lr.truncate(before=start_idx - 750, after=stop_idx + 750)
    only_keypressed = lr_trimmed[lr_trimmed['keypressed'].notna()]

    # plot multiple channels
    markings = np.array(
        [only_keypressed.iloc[i].name for i in range(len(only_keypressed))])
    labels = np.asarray(only_keypressed['keypressed'])
    markings_labels = np.asarray([markings, labels]).T

    ch_names = [
        i for i in lr.columns.values
        if i not in ('timestamp(ms)', 'keypressed')
    ]
    eeg = np.asarray(
        [display_methods.filter_signal(np.asarray(lr[i])) for i in ch_names])

    fig = plt.figure(figsize=(10, int(5 * len(ch_names))),
                     dpi=80,
                     facecolor='w',
                     edgecolor='k')
    for idx, ch in enumerate(eeg):
        stop_plot_idx = start_idx + 10000
        t, spec_freqs, spec_PSDperBin = get_spectral_content(
            ch[start_idx:stop_plot_idx], SAMPLING_FREQ)
        plot_specgram(spec_freqs,
                      spec_PSDperBin,
                      'channel = {}'.format(ch_names[idx]),
                      shift=0,
                      no_chan=len(ch_names),
                      i=idx + 1,
                      cmap='terrain')
        # trim the markings and labels to only those that are within the specified range
        markings_labels_trimmed = [(m, l) for m, l in markings_labels
                                   if m < stop_plot_idx and m > start_idx]
        for mark, label in markings_labels_trimmed:
            plt.text((mark - start_idx) / 250,
                     .2,
                     label,
                     color='white',
                     fontsize=20)
    plt.savefig(save_as)
Exemplo n.º 3
0
def take_pictures(fname_dta=[
    ('./001_trial1_right_keyboard_2020-02-16-19-09-10-309.txt',
     './001_trial1_right_keyboard_OpenBCI-RAW-2020-02-16_18-59-08.txt')
],
                  channel=[1, 2, 3, 4],
                  figsize=(10, 12),
                  folder_name='pictures'):
    channel1 = channel[:]
    # make a folder
    os.mkdir(folder_name)  # throws exception if file already exists

    # for each of the specified files load the data and take pictures
    count1 = 0
    for abc in fname_dta:
        count1 += 1
        markers = abc[0]
        fname = abc[1]
        # load the data, and get intervals information
        lr = load_raw.load_dta(markers, fname, channel + [13])
        explicit_intervals, letters = get_explicit_letter_intervals(
            markers=markers, fname=fname, channel=channel)
        count2 = 0
        for i, j in zip(explicit_intervals, letters):
            count2 += 1
            channel = channel1[:]
            try:
                plot_ts_filtered(markers=markers,
                                 fname=fname,
                                 channel=channel,
                                 figsize=figsize,
                                 explicit_interval=i,
                                 save_fig='./' + folder_name + '/' + j + '_' +
                                 str(count1) + '_' + str(count2) + '_' +
                                 markers[2:-4] + '.png',
                                 disp=False)
            except:
                continue
Exemplo n.º 4
0
def plot_ts_filtered(
        markers='./001_trial1_right_keyboard_2020-02-16-19-09-10-309.txt',
        fname='./001_trial1_right_keyboard_OpenBCI-RAW-2020-02-16_18-59-08.txt',
        channel=[1, 2, 3, 4],
        figsize=(8, 15),
        time_interval=None,
        explicit_interval=None,
        save_fig=None,
        disp=False):
    """
	plot labelled time series data
	time interval if specified must be a two-tuple with values (x,y) 0<x<y<1 
	explicit_interval is just indices (start, stop)
	"""
    # load labelled raw data
    channel.append(13)
    lr = load_raw.load_dta(markers, fname, channel)

    # trim the data frame for plotting

    keypressed = lr['keypressed']
    try:
        start_idx = keypressed.first_valid_index()
        stop_idx = keypressed.last_valid_index()
        # by default trim like this - to be rectified in following conditional statments if needed
        lr_trimmed = lr.truncate(before=start_idx - 500, after=stop_idx + 500)
    except:
        start_idx = 0
        stop_idx = 50000
        lr_trimmed = lr.truncate(before=start_idx, after=stop_idx)
    only_keypressed = lr_trimmed[lr_trimmed['keypressed'].notna()]

    # trim more if user wants it to be trimmed
    if time_interval:
        start_idx_new = int(start_idx + time_interval[0] *
                            (stop_idx - start_idx))
        stop_idx_new = int(start_idx + time_interval[1] *
                           (stop_idx - start_idx))
        lr_trimmed = lr.truncate(before=start_idx_new, after=stop_idx_new)
        only_keypressed = lr_trimmed[lr_trimmed['keypressed'].notna()]

    # trim according to an explicit interval - specially used when saveing pngs
    elif explicit_interval:
        start_idx = explicit_interval[0]
        stop_idx = explicit_interval[1]
        lr_trimmed = lr.truncate(before=start_idx, after=stop_idx)
        only_keypressed = lr_trimmed[lr_trimmed['keypressed'].notna()]

    # plot the data
    the_channels = [
        i for i in lr.columns if i not in ('timestamp(ms)', 'keypressed')
    ]
    count = 0
    fig = plt.figure(figsize=figsize)
    for channel_name in the_channels:
        count += 1
        ch = lr_trimmed[channel_name].values
        timestamps = lr_trimmed['timestamp(ms)'].values

        ###
        ch_keypress = only_keypressed[channel_name].values
        ts_keypress = only_keypressed['timestamp(ms)'].values

        np.unique(only_keypressed['keypressed'].values)

        keys_pressed_unique = np.unique(only_keypressed['keypressed'].values)
        ts_keypress = []
        ch_i_keypress = []
        labels = []
        for letter in keys_pressed_unique:
            labels.append('$' + letter + '$')
            ch_i_keypress.append(only_keypressed.loc[
                only_keypressed['keypressed'] == letter][channel_name].values)
            ts_keypress.append(
                only_keypressed.loc[only_keypressed['keypressed'] ==
                                    letter]['timestamp(ms)'].values)

        # make the plot - raw data
        chop_idx = 250
        plt.subplot(len(the_channels), 1, count)
        print('channel_name', channel_name)  #channel_name
        plt.title(channel_name, fontsize=17)

        # frequency filter
        freq_filtered = filter_signal(ch)
        plt.plot(np.arange(len(freq_filtered))[chop_idx:],
                 freq_filtered[chop_idx:],
                 label='frequency notch filter',
                 color='green',
                 alpha=.3)

        # smooth the filtered with convolution
        freq_filtered_conv = mmav2(freq_filtered, window=16)
        freq_filtered_conv_abs = mmav2(np.abs(freq_filtered), window=10)
        freq_filtered_rms_15 = rms(freq_filtered, 15)
        freq_filtered_rms_5 = rms(freq_filtered, 5)
        freq_filtered_rms_30 = rms(freq_filtered, 30)
        freq_diff_smooth = mmav2(np.abs(np.diff(freq_filtered)), window=10)

        plt.plot(np.arange(len(freq_filtered_conv))[chop_idx:],
                 freq_filtered_conv[chop_idx:],
                 label='conv',
                 alpha=.75)
        plt.plot(np.arange(len(freq_filtered_conv_abs))[chop_idx:],
                 freq_filtered_conv_abs[chop_idx:],
                 label='conv abs',
                 alpha=.75)

        plt.plot(np.arange(len(freq_filtered_rms_15))[chop_idx:],
                 freq_filtered_rms_15[chop_idx:],
                 label='rms 15',
                 alpha=.5)
        plt.plot(np.arange(len(freq_filtered_rms_5))[chop_idx:],
                 freq_filtered_rms_5[chop_idx:],
                 label='rms 5',
                 alpha=.5)
        plt.plot(np.arange(len(freq_filtered_rms_30))[chop_idx:],
                 freq_filtered_rms_30[chop_idx:],
                 label='rms 30',
                 alpha=.6)

        plt.plot(np.arange(len(freq_diff_smooth))[chop_idx:],
                 freq_diff_smooth[chop_idx:],
                 label='freq abs difference',
                 color='red',
                 alpha=.35)

        l = list(lr_trimmed['timestamp(ms)'].values)
        for x, y, lab in zip(ts_keypress, ch_i_keypress, labels):
            x_new = [l.index(i) for i in x]
            plt.plot(x_new,
                     np.ones(len(y)) * 75.0,
                     marker=lab,
                     color='red',
                     linestyle='None')

        plt.legend(fontsize=12, loc=1, framealpha=.1)

        # set the y axis max min if i'm taking pictures
        if explicit_interval:
            x1, x2, y1, y2 = plt.axis()
            plt.axis((x1, x2, -65, 175))
    if save_fig: plt.savefig(save_fig)
    if disp: plt.show()
    plt.close(fig)
Exemplo n.º 5
0
def plot_ts_2(
        markers='./001_trial1_right_keyboard_2020-02-16-19-09-10-309.txt',
        fname='./001_trial1_right_keyboard_OpenBCI-RAW-2020-02-16_18-59-08.txt',
        channel=[1, 2, 3, 4],
        figsize=(8, 15),
        time_interval=None):  #no_dta_pts=None
    """
	plot labelled time series data
	time interval if specified must be a two-tuple with values (x,y) 0<x<y<1 
	"""
    # load labelled raw data
    channel.append(13)
    lr = load_raw.load_dta(markers, fname, channel)

    # trim the data frame for plotting
    keypressed = lr['keypressed']
    start_idx = keypressed.first_valid_index()
    stop_idx = keypressed.last_valid_index()
    lr_trimmed = lr.truncate(before=start_idx - 500, after=stop_idx + 500)
    only_keypressed = lr_trimmed[lr_trimmed['keypressed'].notna()]

    # trim more if user wants it to be trimmed
    if time_interval:
        start_idx_new = int(start_idx + time_interval[0] *
                            (stop_idx - start_idx))
        stop_idx_new = int(start_idx + time_interval[1] *
                           (stop_idx - start_idx))
        lr_trimmed = lr.truncate(before=start_idx_new, after=stop_idx_new)
        only_keypressed = lr_trimmed[lr_trimmed['keypressed'].notna()]

    # plot the data
    channels = [
        i for i in lr.columns if i not in ('timestamp(ms)', 'keypressed')
    ]
    count = 0
    plt.figure(figsize=figsize)
    for channel_name in channels:
        count += 1
        ch = lr_trimmed[channel_name].values
        timestamps = lr_trimmed['timestamp(ms)'].values

        ###
        ch_keypress = only_keypressed[channel_name].values
        ts_keypress = only_keypressed['timestamp(ms)'].values

        np.unique(only_keypressed['keypressed'].values)

        keys_pressed_unique = np.unique(only_keypressed['keypressed'].values)
        ts_keypress = []
        ch_i_keypress = []
        labels = []
        for letter in keys_pressed_unique:
            labels.append('$' + letter + '$')
            ch_i_keypress.append(only_keypressed.loc[
                only_keypressed['keypressed'] == letter][channel_name].values)
            ts_keypress.append(
                only_keypressed.loc[only_keypressed['keypressed'] ==
                                    letter]['timestamp(ms)'].values)

        # make the plot - raw data
        plt.subplot(len(channels), 1, count)
        plt.title(channel_name, fontsize=15)
        plt.plot(ch, label='raw')

        # filter the signal and plot smoothed
        filt_conv_1 = conv_1(ch, 100)
        plt.plot(np.arange(len(filt_conv_1))[100:-100],
                 filt_conv_1[100:-100],
                 label='conv filter')

        # frequency filter
        freq_filtered = filter_signal(ch)
        baseline = np.mean(ch)
        plt.plot(np.arange(len(freq_filtered))[150:],
                 freq_filtered[150:] +
                 np.ones(len(freq_filtered) - 150) * baseline,
                 label='frequency filter',
                 alpha=0.3)

        l = list(lr_trimmed['timestamp(ms)'].values)
        for x, y, lab in zip(ts_keypress, ch_i_keypress, labels):
            x_new = [l.index(i) for i in x]
            plt.plot(x_new,
                     y + np.ones(len(y)) * 300,
                     marker=lab,
                     color='red',
                     linestyle='None')

        plt.legend()

    #plt.savefig('djjd.png')
    plt.show()
Exemplo n.º 6
0
def plot_ts(
        markers='./001_trial1_right_keyboard_2020-02-16-19-09-10-309.txt',
        fname='./001_trial1_right_keyboard_OpenBCI-RAW-2020-02-16_18-59-08.txt',
        channel=[1, 2, 3, 4],
        figsize=(8, 15),
        time_interval=None):  #no_dta_pts=None
    """
	plot labelled time series data
	time interval if specified must be a two-tuple with values (x,y) 0<x<y<1 
	"""
    # load labelled raw data
    channel.append(13)
    lr = load_raw.load_dta(markers, fname, channel)

    # trim the data frame for plotting
    keypressed = lr['keypressed']
    start_idx = keypressed.first_valid_index()
    stop_idx = keypressed.last_valid_index()
    lr_trimmed = lr.truncate(before=start_idx - 500, after=stop_idx + 500)
    only_keypressed = lr_trimmed[lr_trimmed['keypressed'].notna()]

    # trim more if user wants it to be trimmed
    if time_interval:
        start_idx_new = int(start_idx + time_interval[0] *
                            (stop_idx - start_idx))
        stop_idx_new = int(start_idx + time_interval[1] *
                           (stop_idx - start_idx))
        lr_trimmed = lr.truncate(before=start_idx_new, after=stop_idx_new)
        only_keypressed = lr_trimmed[lr_trimmed['keypressed'].notna()]

    # plot the data
    channels = [
        i for i in lr.columns if i not in ('timestamp(ms)', 'keypressed')
    ]
    count = 0
    plt.figure(figsize=figsize)
    for channel_name in channels:
        count += 1
        ch = lr_trimmed[channel_name].values
        timestamps = lr_trimmed['timestamp(ms)'].values

        ###
        ch_keypress = only_keypressed[channel_name].values
        ts_keypress = only_keypressed['timestamp(ms)'].values

        np.unique(only_keypressed['keypressed'].values)

        keys_pressed_unique = np.unique(only_keypressed['keypressed'].values)
        ts_keypress = []
        ch_i_keypress = []
        labels = []
        for letter in keys_pressed_unique:
            labels.append('$' + letter + '$')
            ch_i_keypress.append(only_keypressed.loc[
                only_keypressed['keypressed'] == letter][channel_name].values)
            ts_keypress.append(
                only_keypressed.loc[only_keypressed['keypressed'] ==
                                    letter]['timestamp(ms)'].values)

        # make the plot - raw data
        plt.subplot(len(channels), 1, count)
        plt.title(channel_name, fontsize=15)
        plt.plot(timestamps, ch)

        for x, y, lab in zip(ts_keypress, ch_i_keypress, labels):
            plt.plot(x,
                     y + np.ones(len(y)) * 300,
                     marker=lab,
                     color='red',
                     linestyle='None')

    plt.savefig('asdf.png')
    plt.show()