コード例 #1
0
ファイル: test_CutFlow.py プロジェクト: tobiaskleiner/ctapipe
def test_CutFlow():
    with warns(FutureWarning):
        flow = CutFlow("TestFlow")
        # set_cut and add_cut a aliases
        flow.set_cut("smaller5", smaller5)
        flow.add_cut("smaller3", lambda x: x < 3)

        for i in range(2, 6):
            flow.count("noCuts")
            # .keep counts if the function returns True,
            # i.e. when we "keep" the event
            if flow.keep("smaller5", i):
                # .cut counts if the function returns False,
                # i.e. when we do NOT "cut" the event
                if flow.cut("smaller3", i):
                    pass
                else:
                    # do something else that could fail or be rejected
                    try:
                        assert i == 3
                        flow.count("something")
                    except:
                        pass

        t = flow(sort_column=1)
        assert np.all(t["selected Events"] == [4, 3, 2, 1])

        with raises(UndefinedCut):
            flow.cut("undefined", 5)

        with raises(PureCountingCut):
            flow.cut("noCuts")
コード例 #2
0
ファイル: test_CutFlow.py プロジェクト: epuesche/ctapipe
def test_CutFlow():
    flow = CutFlow("TestFlow")
    # set_cut and add_cut a aliases
    flow.set_cut("smaller5", lambda x: x < 5)
    flow.add_cut("smaller3", lambda x: x < 3)

    for i in range(2, 6):
        flow.count("noCuts")
        # .keep counts if the function returns True,
        # i.e. when we "keep" the event
        if flow.keep("smaller5", i):
            # .cut counts if the function returns False,
            # i.e. when we do NOT "cut" the event
            if flow.cut("smaller3", i):
                pass
            else:
                # do something else that could fail or be rejected
                try:
                    assert i == 3
                    flow.count("something")
                except:
                    pass


    t = flow(sort_column=1)
    assert np.all(t["selected Events"] == [4, 3, 2, 1])

    with raises(UndefinedCutException):
        flow.cut("undefined", 5)

    with raises(PureCountingCutException):
        flow.cut("noCuts")
コード例 #3
0
class SimpleEventWriter(Tool):
    name = 'ctapipe-simple-event-writer'
    description = Unicode(__doc__)

    infile = Unicode(help='input file to read', default='').tag(config=True)
    outfile = Unicode(help='output file name',
                      default_value='output.h5').tag(config=True)
    progress = Bool(help='display progress bar',
                    default_value=True).tag(config=True)

    aliases = Dict({
        'infile': 'EventSource.input_url',
        'outfile': 'SimpleEventWriter.outfile',
        'max-events': 'EventSource.max_events',
        'progress': 'SimpleEventWriter.progress'
    })
    classes = List([EventSource, CameraCalibrator, CutFlow])

    def setup(self):
        self.log.info('Configure EventSource...')

        self.event_source = self.add_component(
            EventSource.from_config(config=self.config, parent=self))

        self.calibrator = self.add_component(CameraCalibrator(parent=self))

        self.writer = self.add_component(
            HDF5TableWriter(filename=self.outfile,
                            group_name='image_infos',
                            overwrite=True))

        # Define Pre-selection for images
        preselcuts = self.config['Preselect']
        self.image_cutflow = CutFlow('Image preselection')
        self.image_cutflow.set_cuts(
            dict(no_sel=None,
                 n_pixel=lambda s: np.count_nonzero(s) < preselcuts['n_pixel'][
                     'min'],
                 image_amplitude=lambda q: q < preselcuts['image_amplitude'][
                     'min']))

        # Define Pre-selection for events
        self.event_cutflow = CutFlow('Event preselection')
        self.event_cutflow.set_cuts(dict(no_sel=None))

    def start(self):
        self.log.info('Loop on events...')

        for event in tqdm(self.event_source,
                          desc='EventWriter',
                          total=self.event_source.max_events,
                          disable=~self.progress):

            self.event_cutflow.count('no_sel')
            self.calibrator(event)

            for tel_id in event.dl0.tels_with_data:
                self.image_cutflow.count('no_sel')

                camera = event.inst.subarray.tel[tel_id].camera
                dl1_tel = event.dl1.tel[tel_id]

                # Image cleaning
                image = dl1_tel.image  # Waiting for automatic gain selection
                mask = tailcuts_clean(camera,
                                      image,
                                      picture_thresh=10,
                                      boundary_thresh=5)
                cleaned = image.copy()
                cleaned[~mask] = 0

                # Preselection cuts
                if self.image_cutflow.cut('n_pixel', cleaned):
                    continue
                if self.image_cutflow.cut('image_amplitude', np.sum(cleaned)):
                    continue

                # Image parametrisation
                params = hillas_parameters(camera, cleaned)

                # Save Ids, MC infos and Hillas informations
                self.writer.write(camera.cam_id, [event.r0, event.mc, params])

    def finish(self):
        self.log.info('End of job.')

        self.image_cutflow()
        self.event_cutflow()
        self.writer.close()
コード例 #4
0
def main():

    # your favourite units here
    energy_unit = u.TeV
    angle_unit = u.deg
    dist_unit = u.m

    agree_threshold = .5
    min_tel = 3

    parser = make_argparser()
    parser.add_argument('--classifier',
                        type=str,
                        default=expandvars(
                            "$CTA_SOFT/tino_cta/data/classifier_pickle/"
                            "classifier_{mode}_{cam_id}_{classifier}.pkl"))
    parser.add_argument('--regressor',
                        type=str,
                        default=expandvars(
                            "$CTA_SOFT/tino_cta/data/classifier_pickle/"
                            "regressor_{mode}_{cam_id}_{regressor}.pkl"))
    parser.add_argument('-o',
                        '--outfile',
                        type=str,
                        default="",
                        help="location to write the classified events to.")
    parser.add_argument('--wave_dir',
                        type=str,
                        default=None,
                        help="directory where to find mr_filter. "
                        "if not set look in $PATH")
    parser.add_argument(
        '--wave_temp_dir',
        type=str,
        default='/dev/shm/',
        help="directory where mr_filter to store the temporary fits "
        "files")

    group = parser.add_mutually_exclusive_group()
    group.add_argument('--proton',
                       action='store_true',
                       help="do protons instead of gammas")
    group.add_argument('--electron',
                       action='store_true',
                       help="do electrons instead of gammas")

    args = parser.parse_args()

    if args.infile_list:
        filenamelist = []
        for f in args.infile_list:
            filenamelist += glob("{}/{}".format(args.indir, f))
        filenamelist.sort()
    elif args.proton:
        filenamelist = sorted(glob("{}/proton/*gz".format(args.indir)))
    elif args.electron:
        filenamelist = glob("{}/electron/*gz".format(args.indir))
        channel = "electron"
    else:
        filenamelist = sorted(glob("{}/gamma/*gz".format(args.indir)))

    if not filenamelist:
        print("no files found; check indir: {}".format(args.indir))
        exit(-1)

    # keeping track of events and where they were rejected
    Eventcutflow = CutFlow("EventCutFlow")
    Imagecutflow = CutFlow("ImageCutFlow")

    # takes care of image cleaning
    cleaner = ImageCleaner(mode=args.mode,
                           cutflow=Imagecutflow,
                           wavelet_options=args.raw,
                           tmp_files_directory=args.wave_temp_dir,
                           skip_edge_events=False,
                           island_cleaning=True)

    # the class that does the shower reconstruction
    shower_reco = HillasReconstructor()

    preper = EventPreparer(
        cleaner=cleaner,
        hillas_parameters=hillas_parameters,
        shower_reco=shower_reco,
        event_cutflow=Eventcutflow,
        image_cutflow=Imagecutflow,
        # event/image cuts:
        allowed_cam_ids=[],
        min_ntel=2,
        min_charge=args.min_charge,
        min_pixel=3)

    # wrapper for the scikit-learn classifier
    classifier = EventClassifier.load(args.classifier.format(
        **{
            "mode": args.mode,
            "wave_args": "mixed",
            "classifier": 'RandomForestClassifier',
            "cam_id": "{cam_id}"
        }),
                                      cam_id_list=args.cam_ids)

    # wrapper for the scikit-learn regressor
    regressor = EnergyRegressor.load(args.regressor.format(
        **{
            "mode": args.mode,
            "wave_args": "mixed",
            "regressor": "RandomForestRegressor",
            "cam_id": "{cam_id}"
        }),
                                     cam_id_list=args.cam_ids)

    ClassifierFeatures = namedtuple(
        "ClassifierFeatures",
        ("impact_dist", "sum_signal_evt", "max_signal_cam", "sum_signal_cam",
         "N_LST", "N_MST", "N_SST", "width", "length", "skewness", "kurtosis",
         "h_max", "err_est_pos", "err_est_dir"))

    EnergyFeatures = namedtuple(
        "EnergyFeatures",
        ("impact_dist", "sum_signal_evt", "max_signal_cam", "sum_signal_cam",
         "N_LST", "N_MST", "N_SST", "width", "length", "skewness", "kurtosis",
         "h_max", "err_est_pos", "err_est_dir"))

    # catch ctr-c signal to exit current loop and still display results
    signal_handler = SignalHandler()
    signal.signal(signal.SIGINT, signal_handler)

    # this class defines the reconstruction parameters to keep track of
    class RecoEvent(tb.IsDescription):
        Run_ID = tb.Int16Col(dflt=-1, pos=0)
        Event_ID = tb.Int16Col(dflt=-1, pos=1)
        NTels_trig = tb.Int16Col(dflt=0, pos=0)
        NTels_reco = tb.Int16Col(dflt=0, pos=1)
        NTels_reco_lst = tb.Int16Col(dflt=0, pos=2)
        NTels_reco_mst = tb.Int16Col(dflt=0, pos=3)
        NTels_reco_sst = tb.Int16Col(dflt=0, pos=4)
        MC_Energy = tb.Float32Col(dflt=np.nan, pos=5)
        reco_Energy = tb.Float32Col(dflt=np.nan, pos=6)
        reco_phi = tb.Float32Col(dflt=np.nan, pos=7)
        reco_theta = tb.Float32Col(dflt=np.nan, pos=8)
        off_angle = tb.Float32Col(dflt=np.nan, pos=9)
        xi = tb.Float32Col(dflt=np.nan, pos=10)
        DeltaR = tb.Float32Col(dflt=np.nan, pos=11)
        ErrEstPos = tb.Float32Col(dflt=np.nan, pos=12)
        ErrEstDir = tb.Float32Col(dflt=np.nan, pos=13)
        gammaness = tb.Float32Col(dflt=np.nan, pos=14)
        success = tb.BoolCol(dflt=False, pos=15)

    channel = "gamma" if "gamma" in " ".join(filenamelist) else "proton"
    reco_outfile = tb.open_file(
        mode="w",
        # if no outfile name is given (i.e. don't to write the event list to disk),
        # need specify two "driver" arguments
        **({
            "filename": args.outfile
        } if args.outfile else {
            "filename": "no_outfile.h5",
            "driver": "H5FD_CORE",
            "driver_core_backing_store": False
        }))

    reco_table = reco_outfile.create_table("/", "reco_events", RecoEvent)
    reco_event = reco_table.row

    allowed_tels = None  # all telescopes
    allowed_tels = prod3b_tel_ids("L+N+D")
    for i, filename in enumerate(filenamelist[:args.last]):
        # print(f"file: {i} filename = {filename}")

        source = hessio_event_source(filename,
                                     allowed_tels=allowed_tels,
                                     max_events=args.max_events)

        # loop that cleans and parametrises the images and performs the reconstruction
        for (event, hillas_dict, n_tels, tot_signal, max_signals, pos_fit,
             dir_fit, h_max, err_est_pos,
             err_est_dir) in preper.prepare_event(source, True):

            # now prepare the features for the classifier
            cls_features_evt = {}
            reg_features_evt = {}
            if hillas_dict is not None:
                for tel_id in hillas_dict.keys():
                    Imagecutflow.count("pre-features")

                    tel_pos = np.array(event.inst.tel_pos[tel_id][:2]) * u.m

                    moments = hillas_dict[tel_id]

                    impact_dist = linalg.length(tel_pos - pos_fit)
                    cls_features_tel = ClassifierFeatures(
                        impact_dist=impact_dist / u.m,
                        sum_signal_evt=tot_signal,
                        max_signal_cam=max_signals[tel_id],
                        sum_signal_cam=moments.size,
                        N_LST=n_tels["LST"],
                        N_MST=n_tels["MST"],
                        N_SST=n_tels["SST"],
                        width=moments.width / u.m,
                        length=moments.length / u.m,
                        skewness=moments.skewness,
                        kurtosis=moments.kurtosis,
                        h_max=h_max / u.m,
                        err_est_pos=err_est_pos / u.m,
                        err_est_dir=err_est_dir / u.deg)

                    reg_features_tel = EnergyFeatures(
                        impact_dist=impact_dist / u.m,
                        sum_signal_evt=tot_signal,
                        max_signal_cam=max_signals[tel_id],
                        sum_signal_cam=moments.size,
                        N_LST=n_tels["LST"],
                        N_MST=n_tels["MST"],
                        N_SST=n_tels["SST"],
                        width=moments.width / u.m,
                        length=moments.length / u.m,
                        skewness=moments.skewness,
                        kurtosis=moments.kurtosis,
                        h_max=h_max / u.m,
                        err_est_pos=err_est_pos / u.m,
                        err_est_dir=err_est_dir / u.deg)

                    if np.isnan(cls_features_tel).any() or np.isnan(
                            reg_features_tel).any():
                        continue

                    Imagecutflow.count("features nan")

                    cam_id = event.inst.subarray.tel[tel_id].camera.cam_id

                    try:
                        reg_features_evt[cam_id] += [reg_features_tel]
                        cls_features_evt[cam_id] += [cls_features_tel]
                    except KeyError:
                        reg_features_evt[cam_id] = [reg_features_tel]
                        cls_features_evt[cam_id] = [cls_features_tel]

            if cls_features_evt and reg_features_evt:

                predict_energ = regressor.predict_by_event([reg_features_evt
                                                            ])["mean"][0]
                predict_proba = classifier.predict_proba_by_event(
                    [cls_features_evt])
                gammaness = predict_proba[0, 0]

                try:
                    # the MC direction of origin of the simulated particle
                    shower = event.mc
                    shower_core = np.array(
                        [shower.core_x / u.m, shower.core_y / u.m]) * u.m
                    shower_org = linalg.set_phi_theta(az_to_phi(shower.az),
                                                      alt_to_theta(shower.alt))

                    # and how the reconstructed direction compares to that
                    xi = linalg.angle(dir_fit, shower_org)
                    DeltaR = linalg.length(pos_fit[:2] - shower_core)
                except Exception:
                    # naked exception catch, because I'm not sure where
                    # it would break in non-MC files
                    xi = np.nan
                    DeltaR = np.nan

                phi, theta = linalg.get_phi_theta(dir_fit)
                phi = (phi if phi > 0 else phi + 360 * u.deg)

                # TODO: replace with actual array pointing direction
                array_pointing = linalg.set_phi_theta(0 * u.deg, 20. * u.deg)
                # angular offset between the reconstructed direction and the array
                # pointing
                off_angle = linalg.angle(dir_fit, array_pointing)

                reco_event["NTels_trig"] = len(event.dl0.tels_with_data)
                reco_event["NTels_reco"] = len(hillas_dict)
                reco_event["NTels_reco_lst"] = n_tels["LST"]
                reco_event["NTels_reco_mst"] = n_tels["MST"]
                reco_event["NTels_reco_sst"] = n_tels["SST"]
                reco_event["reco_Energy"] = predict_energ.to(energy_unit).value
                reco_event["reco_phi"] = phi / angle_unit
                reco_event["reco_theta"] = theta / angle_unit
                reco_event["off_angle"] = off_angle / angle_unit
                reco_event["xi"] = xi / angle_unit
                reco_event["DeltaR"] = DeltaR / dist_unit
                reco_event["ErrEstPos"] = err_est_pos / dist_unit
                reco_event["ErrEstDir"] = err_est_dir / angle_unit
                reco_event["gammaness"] = gammaness
                reco_event["success"] = True
            else:
                reco_event["success"] = False

            # save basic event infos
            reco_event["MC_Energy"] = event.mc.energy.to(energy_unit).value
            reco_event["Event_ID"] = event.r1.event_id
            reco_event["Run_ID"] = event.r1.run_id

            reco_table.flush()
            reco_event.append()

            if signal_handler.stop:
                break
        if signal_handler.stop:
            break

    # make sure everything gets written out nicely
    reco_table.flush()

    try:
        print()
        Eventcutflow()
        print()
        Imagecutflow()

        # do some simple event selection
        # and print the corresponding selection efficiency
        N_selected = len([
            x for x in reco_table.where(
                """(NTels_reco > min_tel) & (gammaness > agree_threshold)""")
        ])
        N_total = len(reco_table)
        print("\nfraction selected events:")
        print("{} / {} = {} %".format(N_selected, N_total,
                                      N_selected / N_total * 100))

    except ZeroDivisionError:
        pass

    print("\nlength filenamelist:", len(filenamelist[:args.last]))

    # do some plotting if so desired
    if args.plot:
        gammaness = [x['gammaness'] for x in reco_table]
        NTels_rec = [x['NTels_reco'] for x in reco_table]
        NTel_bins = np.arange(np.min(NTels_rec), np.max(NTels_rec) + 2) - .5

        NTels_rec_lst = [x['NTels_reco_lst'] for x in reco_table]
        NTels_rec_mst = [x['NTels_reco_mst'] for x in reco_table]
        NTels_rec_sst = [x['NTels_reco_sst'] for x in reco_table]

        reco_energy = np.array([x['reco_Energy'] for x in reco_table])
        mc_energy = np.array([x['MC_Energy'] for x in reco_table])

        fig = plt.figure(figsize=(15, 5))
        plt.suptitle(" ** ".join(
            [args.mode, "protons" if args.proton else "gamma"]))
        plt.subplots_adjust(left=0.05, right=0.97, hspace=0.39, wspace=0.2)

        ax = plt.subplot(131)
        histo = np.histogram2d(NTels_rec,
                               gammaness,
                               bins=(NTel_bins, np.linspace(0, 1, 11)))[0].T
        histo_normed = histo / histo.max(axis=0)
        im = ax.imshow(
            histo_normed,
            interpolation='none',
            origin='lower',
            aspect='auto',
            # extent=(*NTel_bins[[0, -1]], 0, 1),
            cmap=plt.cm.inferno)
        ax.set_xlabel("NTels")
        ax.set_ylabel("drifted gammaness")
        plt.title("Total Number of Telescopes")

        # next subplot

        ax = plt.subplot(132)
        histo = np.histogram2d(NTels_rec_sst,
                               gammaness,
                               bins=(NTel_bins, np.linspace(0, 1, 11)))[0].T
        histo_normed = histo / histo.max(axis=0)
        im = ax.imshow(
            histo_normed,
            interpolation='none',
            origin='lower',
            aspect='auto',
            # extent=(*NTel_bins[[0, -1]], 0, 1),
            cmap=plt.cm.inferno)
        ax.set_xlabel("NTels")
        plt.setp(ax.get_yticklabels(), visible=False)
        plt.title("Number of SSTs")

        # next subplot

        ax = plt.subplot(133)
        histo = np.histogram2d(NTels_rec_mst,
                               gammaness,
                               bins=(NTel_bins, np.linspace(0, 1, 11)))[0].T
        histo_normed = histo / histo.max(axis=0)
        im = ax.imshow(
            histo_normed,
            interpolation='none',
            origin='lower',
            aspect='auto',
            # extent=(*NTel_bins[[0, -1]], 0, 1),
            cmap=plt.cm.inferno)
        cb = fig.colorbar(im, ax=ax)
        ax.set_xlabel("NTels")
        plt.setp(ax.get_yticklabels(), visible=False)
        plt.title("Number of MSTs")

        plt.subplots_adjust(wspace=0.05)

        # plot the energy migration matrix
        plt.figure()
        plt.hist2d(np.log10(reco_energy),
                   np.log10(mc_energy),
                   bins=20,
                   cmap=plt.cm.inferno)
        plt.xlabel("E_MC / TeV")
        plt.ylabel("E_rec / TeV")
        plt.colorbar()

        plt.show()
コード例 #5
0
        print("filename = {}".format(filename))

        source = hessio_event_source(filename,
                                     allowed_tels=allowed_tels,
                                     max_events=args.max_events)

        # loop that cleans and parametrises the images and performs the reconstruction
        for (event, hillas_dict, n_tels, tot_signal, max_signals, pos_fit,
             dir_fit, h_max, err_est_pos,
             err_est_dir) in preper.prepare_event(source):

            # now prepare the features for the classifier
            cls_features_evt = {}
            reg_features_evt = {}
            for tel_id in hillas_dict.keys():
                Imagecutflow.count("pre-features")

                tel_pos = np.array(event.inst.tel_pos[tel_id][:2]) * u.m

                moments = hillas_dict[tel_id]

                impact_dist = linalg.length(tel_pos - pos_fit)

                reg_features_tel = EnergyFeatures(
                    impact_dist=impact_dist / u.m,
                    sum_signal_evt=tot_signal,
                    max_signal_cam=max_signals[tel_id],
                    sum_signal_cam=moments.size,
                    N_LST=n_tels["LST"],
                    N_MST=n_tels["MST"],
                    N_SST=n_tels["SST"],
コード例 #6
0
ファイル: train_classifier.py プロジェクト: jdhp-sap/tino_cta
            print(f"{i} -- filename = {filename}")

            source = hessio_event_source(filename,
                                         allowed_tels=allowed_tels,
                                         #  max_events=args.max_events)
                                         max_events=400)

            # loop that cleans and parametrises the images and performs the reconstruction
            for (event, hillas_dict, n_tels,
                 tot_signal, max_signals, pos_fit, dir_fit, h_max,
                 err_est_pos, err_est_dir) in preper.prepare_event(source):

                # now prepare the features for the classifier
                cls_features_evt = {}
                for tel_id in hillas_dict.keys():
                    Imagecutflow.count("pre-features")

                    tel_pos = np.array(event.inst.tel_pos[tel_id][:2]) * u.m

                    moments = hillas_dict[tel_id]

                    impact_dist = linalg.length(tel_pos - pos_fit)

                    cls_features_tel = ClassifierFeatures(
                        impact_dist=impact_dist / u.m,
                        sum_signal_evt=tot_signal,
                        max_signal_cam=max_signals[tel_id],
                        sum_signal_cam=moments.size,
                        N_LST=n_tels["LST"],
                        N_MST=n_tels["MST"],
                        N_SST=n_tels["SST"],
コード例 #7
0
            org_alt = u.Quantity(shower.alt).to(u.deg)
            org_az = u.Quantity(shower.az).to(u.deg)
            if org_az > 180 * u.deg:
                org_az -= 360 * u.deg

            org_the = alt_to_theta(org_alt)
            org_phi = az_to_phi(org_az)
            shower_org = linalg.set_phi_theta(org_phi, org_the)

            # calibrate the event
            calib.calibrate(event)

            for tel_id in event.dl0.tels_with_data:

                Imagecutflow.count("noCuts")

                pmt_signal_p = event.mc.tel[tel_id].photo_electron_image

                # getting camera geometry
                camera = event.inst.subarray.tel[tel_id].camera

                if tel_id not in tel_phi:
                    tel_phi[tel_id] = az_to_phi(
                        event.mc.tel[tel_id].azimuth_raw * u.rad)
                    tel_theta[tel_id] = \
                        alt_to_theta(event.mc.tel[tel_id].altitude_raw*u.rad)

                pmt_signal = event.dl1.tel[tel_id].image
                pmt_signal = EP.pick_gain_channel(pmt_signal, camera.cam_id)
コード例 #8
0
def main():

    # your favourite units here
    energy_unit = u.TeV
    angle_unit = u.deg
    dist_unit = u.m

    agree_threshold = .5
    min_tel = 3

    parser = make_argparser()
    parser.add_argument('--classifier', type=str,
                        default='data/classifier_pickle/classifier'
                                '_{mode}_{cam_id}_{classifier}.pkl')
    parser.add_argument('--regressor', type=str,
                        default='data/classifier_pickle/regressor'
                                '_{mode}_{cam_id}_{regressor}.pkl')
    parser.add_argument('-o', '--outfile', type=str, default="",
                        help="location to write the classified events to.")
    parser.add_argument('--wave_dir', type=str, default=None,
                        help="directory where to find mr_filter. "
                             "if not set look in $PATH")
    parser.add_argument('--wave_temp_dir', type=str, default='/tmp/', help="directory "
                        "where mr_filter to store the temporary fits files")

    group = parser.add_mutually_exclusive_group()
    group.add_argument('--proton', action='store_true',
                       help="do protons instead of gammas")
    group.add_argument('--electron', action='store_true',
                       help="do electrons instead of gammas")

    args = parser.parse_args()

    if args.infile_list:
        filenamelist = []
        for f in args.infile_list:
            filenamelist += glob("{}/{}".format(args.indir, f))
        filenamelist.sort()
    elif args.proton:
        filenamelist = sorted(glob("{}/proton/*gz".format(args.indir)))
    elif args.electron:
        filenamelist = glob("{}/electron/*gz".format(args.indir))
        channel = "electron"
    else:
        filenamelist = sorted(glob("{}/gamma/*gz".format(args.indir)))

    if not filenamelist:
        print("no files found; check indir: {}".format(args.indir))
        exit(-1)

    # keeping track of events and where they were rejected
    Eventcutflow = CutFlow("EventCutFlow")
    Imagecutflow = CutFlow("ImageCutFlow")

    # takes care of image cleaning
    cleaner = ImageCleaner(mode=args.mode, cutflow=Imagecutflow,
                           wavelet_options=args.raw,
                           skip_edge_events=False, island_cleaning=True)

    # the class that does the shower reconstruction
    shower_reco = HillasReconstructor()

    preper = EventPreparer(
                cleaner=cleaner, hillas_parameters=hillas_parameters,
                shower_reco=shower_reco,
                event_cutflow=Eventcutflow, image_cutflow=Imagecutflow,
                # event/image cuts:
                allowed_cam_ids=[],
                min_ntel=2, min_charge=args.min_charge, min_pixel=3)

    # wrapper for the scikit-learn classifier
    classifier = EventClassifier.load(
                    args.classifier.format(**{
                            "mode": args.mode,
                            "wave_args": "mixed",
                            "classifier": 'RandomForestClassifier',
                            "cam_id": "{cam_id}"}),
                    cam_id_list=args.cam_ids)

    # wrapper for the scikit-learn regressor
    regressor = EnergyRegressor.load(
                    args.regressor.format(**{
                            "mode": args.mode,
                            "wave_args": "mixed",
                            "regressor": "RandomForestRegressor",
                            "cam_id": "{cam_id}"}),
                    cam_id_list=args.cam_ids)

    ClassifierFeatures = namedtuple(
        "ClassifierFeatures", (
            "impact_dist",
            "sum_signal_evt",
            "max_signal_cam",
            "sum_signal_cam",
            "N_LST",
            "N_MST",
            "N_SST",
            "width",
            "length",
            "skewness",
            "kurtosis",
            "h_max",
            "err_est_pos",
            "err_est_dir"))

    EnergyFeatures = namedtuple(
        "EnergyFeatures", (
            "impact_dist",
            "sum_signal_evt",
            "max_signal_cam",
            "sum_signal_cam",
            "N_LST",
            "N_MST",
            "N_SST",
            "width",
            "length",
            "skewness",
            "kurtosis",
            "h_max",
            "err_est_pos",
            "err_est_dir"))

    # catch ctr-c signal to exit current loop and still display results
    signal_handler = SignalHandler()
    signal.signal(signal.SIGINT, signal_handler)

    # this class defines the reconstruction parameters to keep track of
    class RecoEvent(tb.IsDescription):
        Run_ID = tb.Int16Col(dflt=-1, pos=0)
        Event_ID = tb.Int16Col(dflt=-1, pos=1)
        NTels_trig = tb.Int16Col(dflt=0, pos=0)
        NTels_reco = tb.Int16Col(dflt=0, pos=1)
        NTels_reco_lst = tb.Int16Col(dflt=0, pos=2)
        NTels_reco_mst = tb.Int16Col(dflt=0, pos=3)
        NTels_reco_sst = tb.Int16Col(dflt=0, pos=4)
        MC_Energy = tb.Float32Col(dflt=np.nan, pos=5)
        reco_Energy = tb.Float32Col(dflt=np.nan, pos=6)
        reco_phi = tb.Float32Col(dflt=np.nan, pos=7)
        reco_theta = tb.Float32Col(dflt=np.nan, pos=8)
        off_angle = tb.Float32Col(dflt=np.nan, pos=9)
        xi = tb.Float32Col(dflt=np.nan, pos=10)
        DeltaR = tb.Float32Col(dflt=np.nan, pos=11)
        ErrEstPos = tb.Float32Col(dflt=np.nan, pos=12)
        ErrEstDir = tb.Float32Col(dflt=np.nan, pos=13)
        gammaness = tb.Float32Col(dflt=np.nan, pos=14)

    channel = "gamma" if "gamma" in " ".join(filenamelist) else "proton"
    reco_outfile = tb.open_file(
            mode="w",
            # if no outfile name is given (i.e. don't to write the event list to disk),
            # need specify two "driver" arguments
            **({"filename": args.outfile} if args.outfile else
               {"filename": "no_outfile.h5",
                "driver": "H5FD_CORE", "driver_core_backing_store": False}))

    reco_table = reco_outfile.create_table("/", "reco_events", RecoEvent)
    reco_event = reco_table.row

    allowed_tels = None  # all telescopes
    allowed_tels = prod3b_tel_ids("L+N+D")
    for i, filename in enumerate(filenamelist[:args.last]):
        # print(f"file: {i} filename = {filename}")

        source = hessio_event_source(filename,
                                     allowed_tels=allowed_tels,
                                     max_events=args.max_events)

        # loop that cleans and parametrises the images and performs the reconstruction
        for (event, hillas_dict, n_tels,
             tot_signal, max_signals, pos_fit, dir_fit, h_max,
             err_est_pos, err_est_dir) in preper.prepare_event(source, True):

            # now prepare the features for the classifier
            cls_features_evt = {}
            reg_features_evt = {}
            if hillas_dict is not None:
              for tel_id in hillas_dict.keys():
                Imagecutflow.count("pre-features")

                tel_pos = np.array(event.inst.tel_pos[tel_id][:2]) * u.m

                moments = hillas_dict[tel_id]

                impact_dist = linalg.length(tel_pos - pos_fit)
                cls_features_tel = ClassifierFeatures(
                    impact_dist=impact_dist / u.m,
                    sum_signal_evt=tot_signal,
                    max_signal_cam=max_signals[tel_id],
                    sum_signal_cam=moments.size,
                    N_LST=n_tels["LST"],
                    N_MST=n_tels["MST"],
                    N_SST=n_tels["SST"],
                    width=moments.width / u.m,
                    length=moments.length / u.m,
                    skewness=moments.skewness,
                    kurtosis=moments.kurtosis,
                    h_max=h_max / u.m,
                    err_est_pos=err_est_pos / u.m,
                    err_est_dir=err_est_dir / u.deg
                )

                reg_features_tel = EnergyFeatures(
                    impact_dist=impact_dist / u.m,
                    sum_signal_evt=tot_signal,
                    max_signal_cam=max_signals[tel_id],
                    sum_signal_cam=moments.size,
                    N_LST=n_tels["LST"],
                    N_MST=n_tels["MST"],
                    N_SST=n_tels["SST"],
                    width=moments.width / u.m,
                    length=moments.length / u.m,
                    skewness=moments.skewness,
                    kurtosis=moments.kurtosis,
                    h_max=h_max / u.m,
                    err_est_pos=err_est_pos / u.m,
                    err_est_dir=err_est_dir / u.deg
                )

                if np.isnan(cls_features_tel).any() or np.isnan(reg_features_tel).any():
                    continue

                Imagecutflow.count("features nan")

                cam_id = event.inst.subarray.tel[tel_id].camera.cam_id

                try:
                    reg_features_evt[cam_id] += [reg_features_tel]
                    cls_features_evt[cam_id] += [cls_features_tel]
                except KeyError:
                    reg_features_evt[cam_id] = [reg_features_tel]
                    cls_features_evt[cam_id] = [cls_features_tel]

            # save basic event infos
            reco_event["MC_Energy"] = event.mc.energy.to(energy_unit).value
            reco_event["Event_ID"] = event.r1.event_id
            reco_event["Run_ID"] = event.r1.run_id

            if cls_features_evt and reg_features_evt:

                predict_energ = regressor.predict_by_event([reg_features_evt])["mean"][0]
                predict_proba = classifier.predict_proba_by_event([cls_features_evt])
                gammaness = predict_proba[0, 0]

                # the MC direction of origin of the simulated particle
                shower = event.mc
                shower_core = np.array([shower.core_x / u.m, shower.core_y / u.m]) * u.m
                shower_org = linalg.set_phi_theta(shower.az + 90 * u.deg,
                                                  90. * u.deg - shower.alt)

                # and how the reconstructed direction compares to that
                xi = linalg.angle(dir_fit, shower_org)
                phi, theta = linalg.get_phi_theta(dir_fit)
                phi = (phi if phi > 0 else phi + 360 * u.deg)

                DeltaR = linalg.length(pos_fit[:2] - shower_core)

                # TODO: replace with actual array pointing direction
                array_pointing = linalg.set_phi_theta(0 * u.deg, 20. * u.deg)
                # angular offset between the reconstructed direction and the array
                # pointing
                off_angle = linalg.angle(dir_fit, array_pointing)

                reco_event["NTels_trig"] = len(event.dl0.tels_with_data)
                reco_event["NTels_reco"] = len(hillas_dict)
                reco_event["NTels_reco_lst"] = n_tels["LST"]
                reco_event["NTels_reco_mst"] = n_tels["MST"]
                reco_event["NTels_reco_sst"] = n_tels["SST"]
                reco_event["reco_Energy"] = predict_energ.to(energy_unit).value
                reco_event["reco_phi"] = phi / angle_unit
                reco_event["reco_theta"] = theta / angle_unit
                reco_event["off_angle"] = off_angle / angle_unit
                reco_event["xi"] = xi / angle_unit
                reco_event["DeltaR"] = DeltaR / dist_unit
                reco_event["ErrEstPos"] = err_est_pos / dist_unit
                reco_event["ErrEstDir"] = err_est_dir / angle_unit
                reco_event["gammaness"] = gammaness
                reco_event.append()
                reco_table.flush()

            if signal_handler.stop:
                break
        if signal_handler.stop:
            break

    try:
        print()
        Eventcutflow()
        print()
        Imagecutflow()

        # do some simple event selection
        # and print the corresponding selection efficiency
        N_selected = len([x for x in reco_table.where(
            """(NTels_reco > min_tel) & (gammaness > agree_threshold)""")])
        N_total = len(reco_table)
        print("\nfraction selected events:")
        print("{} / {} = {} %".format(N_selected, N_total, N_selected / N_total * 100))

    except ZeroDivisionError:
        pass

    print("\nlength filenamelist:", len(filenamelist[:args.last]))

    # do some plotting if so desired
    if args.plot:
        gammaness = [x['gammaness'] for x in reco_table]
        NTels_rec = [x['NTels_reco'] for x in reco_table]
        NTel_bins = np.arange(np.min(NTels_rec), np.max(NTels_rec) + 2) - .5

        NTels_rec_lst = [x['NTels_reco_lst'] for x in reco_table]
        NTels_rec_mst = [x['NTels_reco_mst'] for x in reco_table]
        NTels_rec_sst = [x['NTels_reco_sst'] for x in reco_table]

        reco_energy = np.array([x['reco_Energy'] for x in reco_table])
        mc_energy = np.array([x['MC_Energy'] for x in reco_table])

        fig = plt.figure(figsize=(15, 5))
        plt.suptitle(" ** ".join([args.mode, "protons" if args.proton else "gamma"]))
        plt.subplots_adjust(left=0.05, right=0.97, hspace=0.39, wspace=0.2)

        ax = plt.subplot(131)
        histo = np.histogram2d(NTels_rec, gammaness,
                               bins=(NTel_bins, np.linspace(0, 1, 11)))[0].T
        histo_normed = histo / histo.max(axis=0)
        im = ax.imshow(histo_normed, interpolation='none', origin='lower',
                       aspect='auto',
                       # extent=(*NTel_bins[[0, -1]], 0, 1),
                       cmap=plt.cm.inferno)
        ax.set_xlabel("NTels")
        ax.set_ylabel("drifted gammaness")
        plt.title("Total Number of Telescopes")

        # next subplot

        ax = plt.subplot(132)
        histo = np.histogram2d(NTels_rec_sst, gammaness,
                               bins=(NTel_bins, np.linspace(0, 1, 11)))[0].T
        histo_normed = histo / histo.max(axis=0)
        im = ax.imshow(histo_normed, interpolation='none', origin='lower',
                       aspect='auto',
                       # extent=(*NTel_bins[[0, -1]], 0, 1),
                       cmap=plt.cm.inferno)
        ax.set_xlabel("NTels")
        plt.setp(ax.get_yticklabels(), visible=False)
        plt.title("Number of SSTs")

        # next subplot

        ax = plt.subplot(133)
        histo = np.histogram2d(NTels_rec_mst, gammaness,
                               bins=(NTel_bins, np.linspace(0, 1, 11)))[0].T
        histo_normed = histo / histo.max(axis=0)
        im = ax.imshow(histo_normed, interpolation='none', origin='lower',
                       aspect='auto',
                       # extent=(*NTel_bins[[0, -1]], 0, 1),
                       cmap=plt.cm.inferno)
        cb = fig.colorbar(im, ax=ax)
        ax.set_xlabel("NTels")
        plt.setp(ax.get_yticklabels(), visible=False)
        plt.title("Number of MSTs")

        plt.subplots_adjust(wspace=0.05)

        # plot the energy migration matrix
        plt.figure()
        plt.hist2d(np.log10(reco_energy), np.log10(mc_energy), bins=20,
                   cmap=plt.cm.inferno)
        plt.xlabel("E_MC / TeV")
        plt.ylabel("E_rec / TeV")
        plt.colorbar()

        plt.show()
コード例 #9
0
class SimpleEventWriter(Tool):
    name = 'ctapipe-simple-event-writer'
    description = Unicode(__doc__)

    infile = Unicode(help='input file to read', default='').tag(config=True)
    outfile = Unicode(help='output file name', default_value='output.h5').tag(config=True)
    progress = Bool(help='display progress bar', default_value=True).tag(config=True)

    aliases = Dict({
        'infile': 'EventSourceFactory.input_url',
        'outfile': 'SimpleEventWriter.outfile',
        'max-events': 'EventSourceFactory.max_events',
        'progress': 'SimpleEventWriter.progress'
    })
    classes = List([EventSourceFactory, CameraCalibrator, CutFlow])

    def setup(self):
        self.log.info('Configure EventSourceFactory...')

        self.event_source = EventSourceFactory.produce(
            config=self.config, tool=self, product='SimTelEventSource'
        )
        self.event_source.allowed_tels = self.config['Analysis']['allowed_tels']

        self.calibrator = CameraCalibrator(
            config=self.config, tool=self, eventsource=self.event_source
        )

        self.writer = HDF5TableWriter(
            filename=self.outfile, group_name='image_infos', overwrite=True
        )

        # Define Pre-selection for images
        preselcuts = self.config['Preselect']
        self.image_cutflow = CutFlow('Image preselection')
        self.image_cutflow.set_cuts(dict(
            no_sel=None,
            n_pixel=lambda s: np.count_nonzero(s) < preselcuts['n_pixel']['min'],
            image_amplitude=lambda q: q < preselcuts['image_amplitude']['min']
        ))

        # Define Pre-selection for events
        self.event_cutflow = CutFlow('Event preselection')
        self.event_cutflow.set_cuts(dict(
            no_sel=None
        ))

    def start(self):
        self.log.info('Loop on events...')

        for event in tqdm(
                self.event_source,
                desc='EventWriter',
                total=self.event_source.max_events,
                disable=~self.progress):

            self.event_cutflow.count('no_sel')
            self.calibrator.calibrate(event)

            for tel_id in event.dl0.tels_with_data:
                self.image_cutflow.count('no_sel')

                camera = event.inst.subarray.tel[tel_id].camera
                dl1_tel = event.dl1.tel[tel_id]

                # Image cleaning
                image = dl1_tel.image[0]  # Waiting for automatic gain selection
                mask = tailcuts_clean(camera, image, picture_thresh=10, boundary_thresh=5)
                cleaned = image.copy()
                cleaned[~mask] = 0

                # Preselection cuts
                if self.image_cutflow.cut('n_pixel', cleaned):
                    continue
                if self.image_cutflow.cut('image_amplitude', np.sum(cleaned)):
                    continue

                # Image parametrisation
                params = hillas_parameters(camera, cleaned)

                # Save Ids, MC infos and Hillas informations
                self.writer.write(camera.cam_id, [event.r0, event.mc, params])

    def finish(self):
        self.log.info('End of job.')

        self.image_cutflow()
        self.event_cutflow()
        self.writer.close()