def read_segment(
        self,
        lazy=False,
        cascade=True,
    ):

        fid = open(self.filename, 'rb')
        globalHeader = HeaderReader(fid, GlobalHeader).read_f(offset=0)
        #~ print globalHeader
        #~ print 'version' , globalHeader['version']
        seg = Segment()
        seg.file_origin = os.path.basename(self.filename)
        seg.annotate(neuroexplorer_version=globalHeader['version'])
        seg.annotate(comment=globalHeader['comment'])

        if not cascade:
            return seg

        offset = 544
        for i in range(globalHeader['nvar']):
            entityHeader = HeaderReader(
                fid, EntityHeader).read_f(offset=offset + i * 208)
            entityHeader['name'] = entityHeader['name'].replace('\x00', '')

            #print 'i',i, entityHeader['type']

            if entityHeader['type'] == 0:
                # neuron
                if lazy:
                    spike_times = [] * pq.s
                else:
                    spike_times = np.memmap(
                        self.filename,
                        np.dtype('i4'),
                        'r',
                        shape=(entityHeader['n']),
                        offset=entityHeader['offset'],
                    )
                    spike_times = spike_times.astype(
                        'f8') / globalHeader['freq'] * pq.s
                sptr = SpikeTrain(
                    times=spike_times,
                    t_start=globalHeader['tbeg'] / globalHeader['freq'] * pq.s,
                    t_stop=globalHeader['tend'] / globalHeader['freq'] * pq.s,
                    name=entityHeader['name'],
                )
                if lazy:
                    sptr.lazy_shape = entityHeader['n']
                sptr.annotate(channel_index=entityHeader['WireNumber'])
                seg.spiketrains.append(sptr)

            if entityHeader['type'] == 1:
                # event
                if lazy:
                    event_times = [] * pq.s
                else:
                    event_times = np.memmap(
                        self.filename,
                        np.dtype('i4'),
                        'r',
                        shape=(entityHeader['n']),
                        offset=entityHeader['offset'],
                    )
                    event_times = event_times.astype(
                        'f8') / globalHeader['freq'] * pq.s
                labels = np.array([''] * event_times.size, dtype='S')
                evar = EventArray(times=event_times,
                                  labels=labels,
                                  channel_name=entityHeader['name'])
                if lazy:
                    evar.lazy_shape = entityHeader['n']
                seg.eventarrays.append(evar)

            if entityHeader['type'] == 2:
                # interval
                if lazy:
                    start_times = [] * pq.s
                    stop_times = [] * pq.s
                else:
                    start_times = np.memmap(
                        self.filename,
                        np.dtype('i4'),
                        'r',
                        shape=(entityHeader['n']),
                        offset=entityHeader['offset'],
                    )
                    start_times = start_times.astype(
                        'f8') / globalHeader['freq'] * pq.s
                    stop_times = np.memmap(
                        self.filename,
                        np.dtype('i4'),
                        'r',
                        shape=(entityHeader['n']),
                        offset=entityHeader['offset'] + entityHeader['n'] * 4,
                    )
                    stop_times = stop_times.astype(
                        'f') / globalHeader['freq'] * pq.s
                epar = EpochArray(times=start_times,
                                  durations=stop_times - start_times,
                                  labels=np.array([''] * start_times.size,
                                                  dtype='S'),
                                  channel_name=entityHeader['name'])
                if lazy:
                    epar.lazy_shape = entityHeader['n']
                seg.epocharrays.append(epar)

            if entityHeader['type'] == 3:
                # spiketrain and wavefoms
                if lazy:
                    spike_times = [] * pq.s
                    waveforms = None
                else:

                    spike_times = np.memmap(
                        self.filename,
                        np.dtype('i4'),
                        'r',
                        shape=(entityHeader['n']),
                        offset=entityHeader['offset'],
                    )
                    spike_times = spike_times.astype(
                        'f8') / globalHeader['freq'] * pq.s

                    waveforms = np.memmap(
                        self.filename,
                        np.dtype('i2'),
                        'r',
                        shape=(entityHeader['n'], 1,
                               entityHeader['NPointsWave']),
                        offset=entityHeader['offset'] + entityHeader['n'] * 4,
                    )
                    waveforms = (waveforms.astype('f') * entityHeader['ADtoMV']
                                 + entityHeader['MVOffset']) * pq.mV
                t_stop = globalHeader['tend'] / globalHeader['freq'] * pq.s
                if spike_times.size > 0:
                    t_stop = max(t_stop, max(spike_times))
                sptr = SpikeTrain(
                    times=spike_times,
                    t_start=globalHeader['tbeg'] / globalHeader['freq'] * pq.s,
                    #~ t_stop = max(globalHeader['tend']/globalHeader['freq']*pq.s,max(spike_times)),
                    t_stop=t_stop,
                    name=entityHeader['name'],
                    waveforms=waveforms,
                    sampling_rate=entityHeader['WFrequency'] * pq.Hz,
                    left_sweep=0 * pq.ms,
                )
                if lazy:
                    sptr.lazy_shape = entityHeader['n']
                sptr.annotate(channel_index=entityHeader['WireNumber'])
                seg.spiketrains.append(sptr)

            if entityHeader['type'] == 4:
                # popvectors
                pass

            if entityHeader['type'] == 5:
                # analog

                timestamps = np.memmap(
                    self.filename,
                    np.dtype('i4'),
                    'r',
                    shape=(entityHeader['n']),
                    offset=entityHeader['offset'],
                )
                timestamps = timestamps.astype('f8') / globalHeader['freq']
                fragmentStarts = np.memmap(
                    self.filename,
                    np.dtype('i4'),
                    'r',
                    shape=(entityHeader['n']),
                    offset=entityHeader['offset'],
                )
                fragmentStarts = fragmentStarts.astype(
                    'f8') / globalHeader['freq']
                t_start = timestamps[0] - fragmentStarts[0] / float(
                    entityHeader['WFrequency'])
                del timestamps, fragmentStarts

                if lazy:
                    signal = [] * pq.mV
                else:
                    signal = np.memmap(
                        self.filename,
                        np.dtype('i2'),
                        'r',
                        shape=(entityHeader['NPointsWave']),
                        offset=entityHeader['offset'],
                    )
                    signal = signal.astype('f')
                    signal *= entityHeader['ADtoMV']
                    signal += entityHeader['MVOffset']
                    signal = signal * pq.mV

                anaSig = AnalogSignal(
                    signal=signal,
                    t_start=t_start * pq.s,
                    sampling_rate=entityHeader['WFrequency'] * pq.Hz,
                    name=entityHeader['name'],
                    channel_index=entityHeader['WireNumber'])
                if lazy:
                    anaSig.lazy_shape = entityHeader['NPointsWave']
                seg.analogsignals.append(anaSig)

            if entityHeader['type'] == 6:
                # markers  : TO TEST
                if lazy:
                    times = [] * pq.s
                    labels = np.array([], dtype='S')
                    markertype = None
                else:
                    times = np.memmap(
                        self.filename,
                        np.dtype('i4'),
                        'r',
                        shape=(entityHeader['n']),
                        offset=entityHeader['offset'],
                    )
                    times = times.astype('f8') / globalHeader['freq'] * pq.s
                    fid.seek(entityHeader['offset'] + entityHeader['n'] * 4)
                    markertype = fid.read(64).replace('\x00', '')
                    labels = np.memmap(
                        self.filename,
                        np.dtype('S' + str(entityHeader['MarkerLength'])),
                        'r',
                        shape=(entityHeader['n']),
                        offset=entityHeader['offset'] + entityHeader['n'] * 4 +
                        64)
                ea = EventArray(times=times,
                                labels=labels.view(np.ndarray),
                                name=entityHeader['name'],
                                channel_index=entityHeader['WireNumber'],
                                marker_type=markertype)
                if lazy:
                    ea.lazy_shape = entityHeader['n']
                seg.eventarrays.append(ea)

        create_many_to_one_relationship(seg)
        return seg
    def read_segment(self,
                                        lazy = False,
                                        cascade = True,
                                        ):


        fid = open(self.filename, 'rb')
        globalHeader = HeaderReader(fid , GlobalHeader ).read_f(offset = 0)
        #~ print globalHeader
        #~ print 'version' , globalHeader['version']
        seg = Segment()
        seg.file_origin = os.path.basename(self.filename)
        seg.annotate(neuroexplorer_version = globalHeader['version'])
        seg.annotate(comment = globalHeader['comment'])

        if not cascade :
            return seg

        offset = 544
        for i in range(globalHeader['nvar']):
            entityHeader = HeaderReader(fid , EntityHeader ).read_f(offset = offset+i*208)
            entityHeader['name'] = entityHeader['name'].decode().replace('\x00','')

            #print 'i',i, entityHeader['type']

            if entityHeader['type'] == 0:
                # neuron
                if lazy:
                    spike_times = [ ]*pq.s
                else:
                    spike_times= np.memmap(self.filename , np.dtype('i4') ,'r' ,
                                                    shape = (entityHeader['n'] ),
                                                    offset = entityHeader['offset'],
                                                    )
                    spike_times = spike_times.astype('f8')/globalHeader['freq']*pq.s
                sptr = SpikeTrain( times= spike_times,
                                                    t_start = globalHeader['tbeg']/globalHeader['freq']*pq.s,
                                                    t_stop = globalHeader['tend']/globalHeader['freq']*pq.s,
                                                    name = entityHeader['name'],
                                                    )
                if lazy:
                    sptr.lazy_shape = entityHeader['n']
                sptr.annotate(channel_index = entityHeader['WireNumber'])
                seg.spiketrains.append(sptr)

            if entityHeader['type'] == 1:
                # event
                if lazy:
                    event_times = [ ]*pq.s
                else:
                    event_times= np.memmap(self.filename , np.dtype('i4') ,'r' ,
                                                    shape = (entityHeader['n'] ),
                                                    offset = entityHeader['offset'],
                                                    )
                    event_times = event_times.astype('f8')/globalHeader['freq'] * pq.s
                labels = np.array(['']*event_times.size, dtype = 'S')
                evar = EventArray(times = event_times, labels=labels, channel_name = entityHeader['name'] )
                if lazy:
                    evar.lazy_shape = entityHeader['n']
                seg.eventarrays.append(evar)

            if entityHeader['type'] == 2:
                # interval
                if lazy:
                    start_times = [ ]*pq.s
                    stop_times = [ ]*pq.s
                else:
                    start_times= np.memmap(self.filename , np.dtype('i4') ,'r' ,
                                                    shape = (entityHeader['n'] ),
                                                    offset = entityHeader['offset'],
                                                    )
                    start_times = start_times.astype('f8')/globalHeader['freq']*pq.s
                    stop_times= np.memmap(self.filename , np.dtype('i4') ,'r' ,
                                                    shape = (entityHeader['n'] ),
                                                    offset = entityHeader['offset']+entityHeader['n']*4,
                                                    )
                    stop_times = stop_times.astype('f')/globalHeader['freq']*pq.s
                epar = EpochArray(times = start_times,
                                  durations =  stop_times - start_times,
                                  labels = np.array(['']*start_times.size, dtype = 'S'),
                                  channel_name = entityHeader['name'])
                if lazy:
                    epar.lazy_shape = entityHeader['n']
                seg.epocharrays.append(epar)

            if entityHeader['type'] == 3:
                # spiketrain and wavefoms
                if lazy:
                    spike_times = [ ]*pq.s
                    waveforms = None
                else:

                    spike_times= np.memmap(self.filename , np.dtype('i4') ,'r' ,
                                                    shape = (entityHeader['n'] ),
                                                    offset = entityHeader['offset'],
                                                    )
                    spike_times = spike_times.astype('f8')/globalHeader['freq'] * pq.s

                    waveforms = np.memmap(self.filename , np.dtype('i2') ,'r' ,
                                                shape = (entityHeader['n'] ,  1,entityHeader['NPointsWave']),
                                                offset = entityHeader['offset']+entityHeader['n'] *4,
                                                )
                    waveforms = (waveforms.astype('f')* entityHeader['ADtoMV'] +  entityHeader['MVOffset'])*pq.mV
                t_stop = globalHeader['tend']/globalHeader['freq']*pq.s
                if spike_times.size>0:
                    t_stop = max(t_stop, max(spike_times))
                sptr = SpikeTrain(      times = spike_times,
                                                t_start = globalHeader['tbeg']/globalHeader['freq']*pq.s,
                                                #~ t_stop = max(globalHeader['tend']/globalHeader['freq']*pq.s,max(spike_times)),
                                                t_stop = t_stop,
                                                name = entityHeader['name'],
                                                waveforms = waveforms,
                                                sampling_rate = entityHeader['WFrequency']*pq.Hz,
                                                left_sweep = 0*pq.ms,
                                                )
                if lazy:
                    sptr.lazy_shape = entityHeader['n']
                sptr.annotate(channel_index = entityHeader['WireNumber'])
                seg.spiketrains.append(sptr)

            if entityHeader['type'] == 4:
                # popvectors
                pass

            if entityHeader['type'] == 5:
                # analog


                timestamps= np.memmap(self.filename , np.dtype('i4') ,'r' ,
                                                        shape = (entityHeader['n'] ),
                                                        offset = entityHeader['offset'],
                                                        )
                timestamps = timestamps.astype('f8')/globalHeader['freq']
                fragmentStarts = np.memmap(self.filename , np.dtype('i4') ,'r' ,
                                                        shape = (entityHeader['n'] ),
                                                        offset = entityHeader['offset'],
                                                        )
                fragmentStarts = fragmentStarts.astype('f8')/globalHeader['freq']
                t_start =  timestamps[0] - fragmentStarts[0]/float(entityHeader['WFrequency'])
                del timestamps, fragmentStarts

                if lazy :
                    signal = [ ]*pq.mV
                else:
                    signal = np.memmap(self.filename , np.dtype('i2') ,'r' ,
                                                            shape = (entityHeader['NPointsWave'] ),
                                                            offset = entityHeader['offset'],
                                                            )
                    signal = signal.astype('f')
                    signal *= entityHeader['ADtoMV']
                    signal += entityHeader['MVOffset']
                    signal = signal*pq.mV

                anaSig = AnalogSignal(signal=signal, t_start=t_start * pq.s,
                                      sampling_rate=
                                      entityHeader['WFrequency'] * pq.Hz,
                                      name=entityHeader['name'],
                                      channel_index=entityHeader['WireNumber'])
                if lazy:
                    anaSig.lazy_shape = entityHeader['NPointsWave']
                seg.analogsignals.append( anaSig )

            if entityHeader['type'] == 6:
                # markers  : TO TEST
                if lazy:
                    times = [ ]*pq.s
                    labels = np.array([ ], dtype = 'S')
                    markertype = None
                else:
                    times= np.memmap(self.filename , np.dtype('i4') ,'r' ,
                                                    shape = (entityHeader['n'] ),
                                                    offset = entityHeader['offset'],
                                                    )
                    times = times.astype('f8')/globalHeader['freq'] * pq.s
                    fid.seek(entityHeader['offset'] + entityHeader['n']*4)
                    markertype = fid.read(64).replace('\x00','')
                    labels = np.memmap(self.filename, np.dtype('S' + str(entityHeader['MarkerLength'])) ,'r',
                                                    shape = (entityHeader['n'] ),
                                                    offset = entityHeader['offset'] + entityHeader['n']*4 + 64
                                                    )
                ea = EventArray( times = times,
                                            labels = labels.view(np.ndarray),
                                            name = entityHeader['name'],
                                            channel_index = entityHeader['WireNumber'],
                                            marker_type = markertype
                                            )
                if lazy:
                    ea.lazy_shape = entityHeader['n']
                seg.eventarrays.append(ea)


        seg.create_many_to_one_relationship()
        return seg
    def read_segment(
        self,
        cascade=True,
        lazy=False,
    ):
        """
        Arguments:
        """
        f = struct_file(self.filename, 'rb')

        #Name
        f.seek(64, 0)
        surname = f.read(22)
        while surname[-1] == ' ':
            if len(surname) == 0: break
            surname = surname[:-1]
        firstname = f.read(20)
        while firstname[-1] == ' ':
            if len(firstname) == 0: break
            firstname = firstname[:-1]

        #Date
        f.seek(128, 0)
        day, month, year, hour, minute, sec = f.read_f('bbbbbb')
        rec_datetime = datetime.datetime(year + 1900, month, day, hour, minute,
                                         sec)

        f.seek(138, 0)
        Data_Start_Offset, Num_Chan, Multiplexer, Rate_Min, Bytes = f.read_f(
            'IHHHH')
        #~ print Num_Chan, Bytes

        #header version
        f.seek(175, 0)
        header_version, = f.read_f('b')
        assert header_version == 4

        seg = Segment(
            name=firstname + ' ' + surname,
            file_origin=os.path.basename(self.filename),
        )
        seg.annotate(surname=surname)
        seg.annotate(firstname=firstname)
        seg.annotate(rec_datetime=rec_datetime)

        if not cascade:
            return seg

        # area
        f.seek(176, 0)
        zone_names = [
            'ORDER', 'LABCOD', 'NOTE', 'FLAGS', 'TRONCA', 'IMPED_B', 'IMPED_E',
            'MONTAGE', 'COMPRESS', 'AVERAGE', 'HISTORY', 'DVIDEO', 'EVENT A',
            'EVENT B', 'TRIGGER'
        ]
        zones = {}
        for zname in zone_names:
            zname2, pos, length = f.read_f('8sII')
            zones[zname] = zname2, pos, length
            #~ print zname2, pos, length

        # reading raw data
        if not lazy:
            f.seek(Data_Start_Offset, 0)
            rawdata = np.fromstring(f.read(), dtype='u' + str(Bytes))
            rawdata = rawdata.reshape((rawdata.size / Num_Chan, Num_Chan))

        # Reading Code Info
        zname2, pos, length = zones['ORDER']
        f.seek(pos, 0)
        code = np.fromfile(f, dtype='u2', count=Num_Chan)

        units = {
            -1: pq.nano * pq.V,
            0: pq.uV,
            1: pq.mV,
            2: 1,
            100: pq.percent,
            101: pq.dimensionless,
            102: pq.dimensionless
        }

        for c in range(Num_Chan):
            zname2, pos, length = zones['LABCOD']
            f.seek(pos + code[c] * 128 + 2, 0)

            label = f.read(6).strip("\x00")
            ground = f.read(6).strip("\x00")
            logical_min, logical_max, logical_ground, physical_min, physical_max = f.read_f(
                'iiiii')
            k, = f.read_f('h')
            if k in units.keys():
                unit = units[k]
            else:
                unit = pq.uV

            f.seek(8, 1)
            sampling_rate, = f.read_f('H') * pq.Hz
            sampling_rate *= Rate_Min

            if lazy:
                signal = [] * unit
            else:
                factor = float(physical_max -
                               physical_min) / float(logical_max -
                                                     logical_min + 1)
                signal = (rawdata[:, c].astype('f') -
                          logical_ground) * factor * unit

            anaSig = AnalogSignal(signal,
                                  sampling_rate=sampling_rate,
                                  name=label,
                                  channel_index=c)
            if lazy:
                anaSig.lazy_shape = None
            anaSig.annotate(ground=ground)

            seg.analogsignals.append(anaSig)

        sampling_rate = np.mean(
            [anaSig.sampling_rate for anaSig in seg.analogsignals]) * pq.Hz

        # Read trigger and notes
        for zname, label_dtype in [('TRIGGER', 'u2'), ('NOTE', 'S40')]:
            zname2, pos, length = zones[zname]
            f.seek(pos, 0)
            triggers = np.fromstring(
                f.read(length),
                dtype=[('pos', 'u4'), ('label', label_dtype)],
            )
            ea = EventArray(name=zname[0] + zname[1:].lower())
            if not lazy:
                keep = (triggers['pos'] >= triggers['pos'][0]) & (
                    triggers['pos'] < rawdata.shape[0]) & (triggers['pos'] !=
                                                           0)
                triggers = triggers[keep]
                ea.labels = triggers['label'].astype('S')
                ea.times = (triggers['pos'] / sampling_rate).rescale('s')
            else:
                ea.lazy_shape = triggers.size
            seg.eventarrays.append(ea)

        # Read Event A and B
        # Not so well  tested
        for zname in ['EVENT A', 'EVENT B']:
            zname2, pos, length = zones[zname]
            f.seek(pos, 0)
            epochs = np.fromstring(f.read(length),
                                   dtype=[
                                       ('label', 'u4'),
                                       ('start', 'u4'),
                                       ('stop', 'u4'),
                                   ])
            ep = EpochArray(name=zname[0] + zname[1:].lower())
            if not lazy:
                keep = (epochs['start'] > 0) & (
                    epochs['start'] < rawdata.shape[0]) & (epochs['stop'] <
                                                           rawdata.shape[0])
                epochs = epochs[keep]
                ep.labels = epochs['label'].astype('S')
                ep.times = (epochs['start'] / sampling_rate).rescale('s')
                ep.durations = ((epochs['stop'] - epochs['start']) /
                                sampling_rate).rescale('s')
            else:
                ep.lazy_shape = triggers.size
            seg.epocharrays.append(ep)

        seg.create_many_to_one_relationship()
        return seg
    def read_segment(self, cascade = True, lazy = False,):
        """
        Arguments:
        """
        f = struct_file(self.filename, 'rb')

        #Name
        f.seek(64,0)
        surname = f.read(22)
        while surname[-1] == ' ' :
            if len(surname) == 0 :break
            surname = surname[:-1]
        firstname = f.read(20)
        while firstname[-1] == ' ' :
            if len(firstname) == 0 :break
            firstname = firstname[:-1]

        #Date
        f.seek(128,0)
        day, month, year, hour, minute, sec = f.read_f('bbbbbb')
        rec_datetime = datetime.datetime(year+1900 , month , day, hour, minute, sec)

        f.seek(138,0)
        Data_Start_Offset , Num_Chan , Multiplexer , Rate_Min , Bytes = f.read_f('IHHHH')
        #~ print Num_Chan, Bytes

        #header version
        f.seek(175,0)
        header_version, = f.read_f('b')
        assert header_version == 4

        seg = Segment(  name = firstname+' '+surname,
                                    file_origin = os.path.basename(self.filename),
                                    )
        seg.annotate(surname = surname)
        seg.annotate(firstname = firstname)
        seg.annotate(rec_datetime = rec_datetime)

        if not cascade:
            return seg

        # area
        f.seek(176,0)
        zone_names = ['ORDER', 'LABCOD', 'NOTE', 'FLAGS', 'TRONCA', 'IMPED_B', 'IMPED_E', 'MONTAGE',
                'COMPRESS', 'AVERAGE', 'HISTORY', 'DVIDEO', 'EVENT A', 'EVENT B', 'TRIGGER']
        zones = { }
        for zname in zone_names:
            zname2, pos, length = f.read_f('8sII')
            zones[zname] = zname2, pos, length
            #~ print zname2, pos, length

        # reading raw data
        if not lazy:
            f.seek(Data_Start_Offset,0)
            rawdata = np.fromstring(f.read() , dtype = 'u'+str(Bytes))
            rawdata = rawdata.reshape(( rawdata.size/Num_Chan , Num_Chan))

        # Reading Code Info
        zname2, pos, length = zones['ORDER']
        f.seek(pos,0)
        code = np.fromfile(f, dtype='u2', count=Num_Chan)

        units = {-1: pq.nano*pq.V, 0:pq.uV, 1:pq.mV, 2:1, 100: pq.percent,  101:pq.dimensionless, 102:pq.dimensionless}

        for c in range(Num_Chan):
            zname2, pos, length = zones['LABCOD']
            f.seek(pos+code[c]*128+2,0)

            label = f.read(6).strip("\x00")
            ground = f.read(6).strip("\x00")
            logical_min , logical_max, logical_ground, physical_min, physical_max = f.read_f('iiiii')
            k, = f.read_f('h')
            if k in units.keys() :
                unit = units[k]
            else :
                unit = pq.uV

            f.seek(8,1)
            sampling_rate, = f.read_f('H') * pq.Hz
            sampling_rate *= Rate_Min

            if lazy:
                signal = [ ]*unit
            else:
                factor = float(physical_max - physical_min) / float(logical_max-logical_min+1)
                signal = ( rawdata[:,c].astype('f') - logical_ground )* factor*unit

            anaSig = AnalogSignal(signal, sampling_rate=sampling_rate,
                                  name=label, channel_index=c)
            if lazy:
                anaSig.lazy_shape = None
            anaSig.annotate(ground = ground)

            seg.analogsignals.append( anaSig )


        sampling_rate = np.mean([ anaSig.sampling_rate for anaSig in seg.analogsignals ])*pq.Hz

        # Read trigger and notes
        for zname, label_dtype in [ ('TRIGGER', 'u2'), ('NOTE', 'S40') ]:
            zname2, pos, length = zones[zname]
            f.seek(pos,0)
            triggers = np.fromstring(f.read(length) , dtype = [('pos','u4'), ('label', label_dtype)] ,  )
            ea = EventArray(name =zname[0]+zname[1:].lower())
            if not lazy:
                keep = (triggers['pos']>=triggers['pos'][0]) & (triggers['pos']<rawdata.shape[0]) & (triggers['pos']!=0)
                triggers = triggers[keep]
                ea.labels = triggers['label'].astype('S')
                ea.times = (triggers['pos']/sampling_rate).rescale('s')
            else:
                ea.lazy_shape = triggers.size
            seg.eventarrays.append(ea)
        
        # Read Event A and B
        # Not so well  tested
        for zname in ['EVENT A', 'EVENT B']:
            zname2, pos, length = zones[zname]
            f.seek(pos,0)
            epochs = np.fromstring(f.read(length) , 
                            dtype = [('label','u4'),('start','u4'),('stop','u4'),]  )
            ep = EpochArray(name =zname[0]+zname[1:].lower())
            if not lazy:
                keep = (epochs['start']>0) & (epochs['start']<rawdata.shape[0]) & (epochs['stop']<rawdata.shape[0])
                epochs = epochs[keep]
                ep.labels = epochs['label'].astype('S')
                ep.times = (epochs['start']/sampling_rate).rescale('s')
                ep.durations = ((epochs['stop'] - epochs['start'])/sampling_rate).rescale('s')
            else:
                ep.lazy_shape = triggers.size
            seg.epocharrays.append(ep)
        
        
        seg.create_many_to_one_relationship()
        return seg