コード例 #1
0
def test_extractor_ctio_planetary_nebula():
    file_names = ['tests/data/reduc_20170605_028.fits']
    output_directory = "./outputs"

    logbook = LogBook(logbook='./ctiofulllogbook_jun2017_v5.csv')
    load_config("./config/ctio.ini")
    parameters.VERBOSE = True
    parameters.DEBUG = True
    parameters.CCD_REBIN = 1  # do not work with other values
    parameters.LAMBDA_MIN = 450
    parameters.LAMBDA_MAX = 1000

    for file_name in file_names:
        tag = file_name.split('/')[-1]
        disperser_label, target_label, xpos, ypos = logbook.search_for_image(
            tag)
        if target_label is None or xpos is None or ypos is None:
            continue
        spectrum = Spectractor(file_name,
                               output_directory,
                               target_label, [xpos, ypos],
                               disperser_label,
                               atmospheric_lines=True)
        assert spectrum.data is not None
        spectrum.my_logger.warning(
            f"\n\tQuantities to test:"
            f"\n\t\tspectrum.lambdas[0]={spectrum.lambdas[0]}"
            f"\n\t\tspectrum.lambdas[-1]={spectrum.lambdas[-1]}"
            f"\n\t\tspectrum.x0={spectrum.x0}"
            f"\n\t\tspectrum.spectrogram_x0={spectrum.spectrogram_x0}"
            f"\n\t\tspectrum total flux={np.sum(spectrum.data) * parameters.CCD_REBIN ** 2}"
            f"\n\t\tnp.mean(spectrum.chromatic_psf.table['gamma']="
            f"{np.mean(spectrum.chromatic_psf.table['gamma'])}")
        if parameters.SPECTRACTOR_DECONVOLUTION_PSF2D or parameters.SPECTRACTOR_DECONVOLUTION_FFM:
            assert np.isclose(spectrum.lambdas[0], 449, atol=1)
            assert np.isclose(spectrum.lambdas[-1], 996.5, atol=1)
        else:
            assert np.isclose(spectrum.lambdas[0], 443, atol=1)
            assert np.isclose(spectrum.lambdas[-1], 981, atol=1)
        assert np.isclose(spectrum.spectrogram_x0, -368, atol=1)
        assert np.sum(
            spectrum.data
        ) * parameters.CCD_REBIN**2 > 1e-11 / parameters.CCD_REBIN
        assert np.isclose(spectrum.x0[0] * parameters.CCD_REBIN,
                          816.75,
                          atol=0.5 * parameters.CCD_REBIN)
        assert np.isclose(spectrum.x0[1] * parameters.CCD_REBIN,
                          587.67,
                          atol=1 * parameters.CCD_REBIN)
        assert 1 < np.mean(
            spectrum.chromatic_psf.table['gamma']) * parameters.CCD_REBIN < 2.5
        assert os.path.isfile(
            os.path.join(output_directory,
                         tag.replace('.fits', '_spectrum.fits'))) is True
        assert os.path.isfile(
            os.path.join(output_directory,
                         tag.replace('.fits', '_spectrogram.fits'))) is True
        assert os.path.isfile(
            os.path.join(output_directory, tag.replace('.fits',
                                                       '_lines.csv'))) is True
コード例 #2
0
def test_extractor_ctio():
    file_names = ['tests/data/reduc_20170530_134.fits']
    output_directory = "./outputs"

    logbook = LogBook(logbook='./ctiofulllogbook_jun2017_v5.csv')
    load_config("./config/ctio.ini")
    parameters.VERBOSE = True
    parameters.DEBUG = True
    parameters.CCD_REBIN = 1
    apply_rebinning_to_parameters()

    for file_name in file_names:
        tag = file_name.split('/')[-1].replace("sim", "reduc")
        disperser_label, target_label, xpos, ypos = logbook.search_for_image(
            tag)
        if target_label is None or xpos is None or ypos is None:
            continue
        spectrum = Spectractor(file_name,
                               output_directory,
                               target_label, [xpos, ypos],
                               disperser_label,
                               atmospheric_lines=True)
        assert spectrum.data is not None
        spectrum.my_logger.warning(
            f"\n\tQuantities to test:"
            f"\n\t\tspectrum.lambdas[0]={spectrum.lambdas[0]}"
            f"\n\t\tspectrum.lambdas[-1]={spectrum.lambdas[-1]}"
            f"\n\t\tspectrum.x0={spectrum.x0}"
            f"\n\t\tspectrum.spectrogram_x0={spectrum.spectrogram_x0}"
            f"\n\t\tspectrum total flux={np.sum(spectrum.data) * parameters.CCD_REBIN ** 2}"
            f"\n\t\tnp.mean(spectrum.chromatic_psf.table['gamma']="
            f"{np.mean(spectrum.chromatic_psf.table['gamma'])}")
        assert np.sum(
            spectrum.data
        ) * parameters.CCD_REBIN**2 > 2e-11 / parameters.CCD_REBIN
        if parameters.CCD_REBIN == 1:
            if parameters.SPECTRACTOR_DECONVOLUTION_PSF2D or parameters.SPECTRACTOR_DECONVOLUTION_FFM:
                assert np.isclose(spectrum.lambdas[0], 343, atol=1)
                assert np.isclose(spectrum.lambdas[-1], 1084.0, atol=1)
            else:
                assert np.isclose(spectrum.lambdas[0], 347, atol=1)
                assert np.isclose(spectrum.lambdas[-1], 1085.0, atol=1)
            assert np.isclose(spectrum.spectrogram_x0, -280, atol=1)
        assert np.isclose(spectrum.x0[0] * parameters.CCD_REBIN,
                          743.6651370068676,
                          atol=0.5 * parameters.CCD_REBIN)
        assert np.isclose(spectrum.x0[1] * parameters.CCD_REBIN,
                          683.0577836601408,
                          atol=1 * parameters.CCD_REBIN)
        assert 2 < np.mean(
            spectrum.chromatic_psf.table['gamma']) * parameters.CCD_REBIN < 3.5
        assert os.path.isfile(
            os.path.join(output_directory,
                         tag.replace('.fits', '_spectrum.fits'))) is True
        assert os.path.isfile(
            os.path.join(output_directory,
                         tag.replace('.fits', '_spectrogram.fits'))) is True
        assert os.path.isfile(
            os.path.join(output_directory, tag.replace('.fits',
                                                       '_lines.csv'))) is True
コード例 #3
0
ファイル: test_extractor.py プロジェクト: lsst-dm/Spectractor
def test_logbook():
    logbook = LogBook('./ctiofulllogbook_jun2017_v5.csv')
    # target, xpos, ypos = logbook.search_for_image('reduc_20170529_085.fits')
    # assert xpos is None
    disperser_label, target, xpos, ypos = logbook.search_for_image('reduc_20170603_020.fits')
    assert target == "PKS1510-089"
    assert xpos == 830
    assert ypos == 590
コード例 #4
0
def test_astrometry():
    file_names = ['tests/data/reduc_20170530_134.fits'
                  ]  # 'tests/data/reduc_20170605_028.fits']

    load_config('./config/ctio.ini')
    logbook = LogBook(logbook='./ctiofulllogbook_jun2017_v5.csv')
    parameters.VERBOSE = True
    parameters.DEBUG = True

    radius = 500
    maxiter = 10

    for file_name in file_names:
        wcs_output_directory = set_wcs_output_directory(file_name)
        if os.path.isdir(wcs_output_directory):
            subprocess.check_output(f"rm -rf {wcs_output_directory}",
                                    shell=True)
        tag = file_name.split('/')[-1].replace('sim', 'reduc')
        disperser_label, target, xpos, ypos = logbook.search_for_image(tag)
        if target is None or xpos is None or ypos is None:
            continue
        a = Astrometry(file_name, target, disperser_label)
        extent = ((int(max(0, xpos - radius)),
                   int(min(xpos + radius, parameters.CCD_IMSIZE))),
                  (int(max(0, ypos - radius)),
                   int(min(ypos + radius, parameters.CCD_IMSIZE))))
        gaia_min_residuals = a.run_full_astrometry(extent=extent,
                                                   maxiter=maxiter)
        # checks
        assert os.path.isdir(wcs_output_directory)
        assert os.path.isfile(set_wcs_file_name(file_name))
        assert a.data is not None
        assert np.sum(a.data) > 1e-10
        assert gaia_min_residuals < 0.8
        # assert np.all(np.abs([dra_median, ddec_median]) < 1e-3)
        if file_name == 'tests/data/reduc_20170605_028.fits':
            assert len(a.sources) > 200
            assert np.isclose(a.target_radec_position_after_pm.ra.value,
                              224.97283917)
            assert np.isclose(a.target_radec_position_after_pm.dec.value,
                              -54.30209)
            a.my_logger.warning(f"{a.wcs.wcs.crval}")
            assert np.isclose(a.wcs.wcs.crval[0], 224.9718998, atol=0.03)
            assert np.isclose(a.wcs.wcs.crval[1], -54.28912925, atol=0.03)
        if file_name == 'tests/data/sim_20170530_134.fits':
            im = Image(file_name, target_label=target)
            parameters.SPECTRACTOR_FIT_TARGET_CENTROID = "WCS"
            x0_wcs, y0_wcs = find_target(im, guess=[xpos, ypos], rotated=False)
            parameters.SPECTRACTOR_FIT_TARGET_CENTROID = "fit"
            x0, y0 = find_target(im, guess=[xpos, ypos], rotated=False)
            im.my_logger.warning(
                f"\n\tTrue {target} position: "
                f"{np.array([float(im.header['X0_T']), float(im.header['Y0_T'])])}"
                f"\n\tFound {target} position with WCS: {np.array([x0_wcs, y0_wcs])}"
                f"\n\tFound {target} position with 2D fit: {np.array([x0, y0])}"
            )
            assert np.abs(x0_wcs - float(im.header['X0_T'])) < 0.5
            assert np.abs(y0_wcs - float(im.header['Y0_T'])) < 1
コード例 #5
0
def test_spectractor():
    file_names = ['./tests/data/reduc_20170605_028.fits']

    logbook = LogBook(logbook='./ctiofulllogbook_jun2017_v5.csv')
    parameters.VERBOSE = True

    for file_name in file_names:
        tag = file_name.split('/')[-1]
        target, xpos, ypos = logbook.search_for_image(tag)
        if target is None or xpos is None or ypos is None:
            continue
        spectrum = Spectractor(file_name, './outputs/', [xpos, ypos], target)
        assert spectrum.data is not None
        assert os.path.isfile('./outputs/' + tag.replace('.fits', '_spectrum.fits')) is True
コード例 #6
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def test_fitchromaticpsf2d_run(sim_image="./tests/data/sim_20170530_134.fits",
                               config="./config/ctio.ini"):
    load_test(sim_image, config=config)
    tag = sim_image.split('/')[-1]
    tag = tag.replace('sim_', 'reduc_')
    logbook = LogBook(logbook="./ctiofulllogbook_jun2017_v5.csv")
    disperser_label, target, xpos, ypos = logbook.search_for_image(tag)
    spectrum = Spectractor(sim_image,
                           "./tests/data",
                           guess=[xpos, ypos],
                           target_label=target,
                           disperser_label=disperser_label,
                           config="./config/ctio.ini")
    return spectrum
コード例 #7
0
def search_for_image(logbook: LogBook, tag: str) -> (str, int, int):
    """
    Search for image according to a `tag`, and return
    info (target name, xposition, yposition).
    If one of the infos is None, return None.

    Parameters
    ----------
    logbook : LogBook
        Instance of spectractor.logbook.LogBook
    tag : String
        The tag of the image (filename) as written in the logbook.

    Return
    ----------
    (target, xpos, ypos): (String, Int, Int) or None
        Return the info (name, xposition, yposition) or None if
        at least one of the infos is None.
    """
    target, xpos, ypos = logbook.search_for_image(tag)
    if target is None or xpos is None or ypos is None:
        return None
    else:
        return target, xpos, ypos
コード例 #8
0
ファイル: runExtractor.py プロジェクト: LSSTDESC/Spectractor
    parameters.VERBOSE = args.verbose
    if args.debug:
        parameters.DEBUG = True
        parameters.VERBOSE = True

    file_names = args.input

    load_config(args.config)

    logbook = LogBook(logbook=args.logbook)
    for file_name in file_names:
        disperser_label = args.disperser_label
        if parameters.OBS_NAME == "CTIO":
            tag = file_name.split('/')[-1]
            tag = tag.replace('sim_', 'reduc_')
            disperser_label, target_label, xpos, ypos = logbook.search_for_image(
                tag)
            guess = [xpos, ypos]
            if target_label is None or xpos is None or ypos is None:
                continue
        else:
            guess = None
            if args.target_xy != "0,0":
                xpos, ypos = args.target_xy.split(",")
                xpos = float(xpos)
                ypos = float(ypos)
                guess = [xpos, ypos]
            target_label = args.target_label
            # if target_label == "" or (xpos == 0 and ypos == 0):
            #     sys.exit("Options --xy and --target must be used together, one of these seems not set.")
        Spectractor(file_name,
                    args.output_directory,
コード例 #9
0
        parameters.VERBOSE = True

    file_names = glob.glob(os.path.join(args.input, "*/*.fits"))

    logbook = LogBook(logbook=args.csv)

    rank = MPI.COMM_WORLD.rank
    size = MPI.COMM_WORLD.size

    if rank == 0:
        print("{} files to process".format(len(file_names)))
        print("{} processors used".format(size))

    for position in range(rank, len(file_names), size):
        file_name = file_names[position]
        opt = logbook.search_for_image(file_name.split('/')[-1])
        target = opt[0]
        xpos = opt[1]
        ypos = opt[2]
        if target is None or xpos is None or ypos is None:
            continue
        try:
            Spectractor(file_name, args.output_directory, [xpos, ypos], target)
        except ValueError:
            file_name = file_name + "_ValueError_BAD"
            print("[{}] {} failed".format(rank, file_name))
        except RemoteServiceError:
            file_name = file_name + "_RemoteServiceError_BAD"
            print("[{}] {} failed".format(rank, file_name))
        except IndexError:
            file_name = file_name + "_IndexError_BAD"
コード例 #10
0
def fullchain_run(sim_image="./tests/data/sim_20170530_134.fits"):
    # load test and make image simulation
    load_config("./config/ctio.ini")
    if not os.path.isfile(sim_image):
        make_image()
    image = Image(sim_image)
    lambdas_truth = np.fromstring(image.header['LBDAS_T'][1:-1], sep=' ')
    amplitude_truth = np.fromstring(image.header['AMPLIS_T'][1:-1],
                                    sep=' ',
                                    dtype=float)
    parameters.AMPLITUDE_TRUTH = np.copy(amplitude_truth)
    parameters.LAMBDA_TRUTH = np.copy(lambdas_truth)

    # extractor
    tag = os.path.basename(sim_image)
    tag = tag.replace('sim_', 'reduc_')
    logbook = LogBook(logbook="./ctiofulllogbook_jun2017_v5.csv")
    disperser_label, target, xpos, ypos = logbook.search_for_image(tag)
    parameters.PSF_POLY_ORDER = PSF_POLY_ORDER
    spectrum = Spectractor(sim_image,
                           "./tests/data",
                           guess=[xpos, ypos],
                           target_label=target,
                           disperser_label=disperser_label)
    # spectrum = Spectrum("./tests/data/sim_20170530_134_spectrum.fits")
    # spectrum = Spectrum("./tests/data/sim_20170530_176_spectrum.fits")

    # tests
    residuals = plot_residuals(spectrum, lambdas_truth, amplitude_truth)

    spectrum.my_logger.warning(
        f"\n\tQuantities to test:"
        f"\n\t\tspectrum.header['X0_T']={spectrum.header['X0_T']:.5g} vs {spectrum.x0[0]:.5g}"
        f"\n\t\tspectrum.header['Y0_T']={spectrum.header['Y0_T']:.5g} vs {spectrum.x0[1]:.5g}"
        f"\n\t\tspectrum.header['ROT_T']={spectrum.header['ROT_T']:.5g} "
        f"vs {spectrum.rotation_angle:.5g}"
        f"\n\t\tspectrum.header['BKGD_LEV']={spectrum.header['BKGD_LEV']:.5g} "
        f"vs {np.mean(spectrum.spectrogram_bgd):.5g}"
        f"\n\t\tspectrum.header['D2CCD_T']={spectrum.header['D2CCD_T']:.5g} "
        f"vs {spectrum.disperser.D:.5g}"
        f"\n\t\tspectrum.header['A2_FIT']={spectrum.header['A2_FIT']:.5g} vs {A2_T:.5g}"
        f"\n\t\tspectrum.header['CHI2_FIT']={spectrum.header['CHI2_FIT']:.4g}"
        f"\n\t\tspectrum.chromatic_psf.poly_params="
        f"{spectrum.chromatic_psf.poly_params[spectrum.chromatic_psf.Nx + 2 * (PSF_POLY_ORDER + 1):-1]}"
        f" vs {PSF_POLY_PARAMS_TRUTH[2 * (PSF_POLY_ORDER + 1):-1]}"
        f"\n\t\tresiduals wrt truth: mean={np.mean(residuals[100:-100]):.5g}, "
        f"std={np.std(residuals[100:-100]):.5g}")
    assert np.isclose(float(spectrum.header['X0_T']), spectrum.x0[0], atol=0.2)
    assert np.isclose(float(spectrum.header['Y0_T']), spectrum.x0[1], atol=0.5)
    assert np.isclose(float(spectrum.header['ROT_T']),
                      spectrum.rotation_angle,
                      atol=180 / np.pi * 1 / parameters.CCD_IMSIZE)
    assert np.isclose(float(spectrum.header['BKGD_LEV']),
                      np.mean(spectrum.spectrogram_bgd),
                      rtol=1e-2)
    assert np.isclose(float(spectrum.header['D2CCD_T']),
                      spectrum.disperser.D,
                      atol=0.1)
    assert float(spectrum.header['CHI2_FIT']) < 0.65
    assert np.all(
        np.isclose(
            spectrum.chromatic_psf.poly_params[spectrum.chromatic_psf.Nx + 2 *
                                               (PSF_POLY_ORDER + 1):-1],
            np.array(PSF_POLY_PARAMS_TRUTH)[2 * (PSF_POLY_ORDER + 1):-1],
            rtol=0.1,
            atol=0.1))
    assert np.abs(np.mean(residuals[100:-100])) < 0.25
    assert np.std(residuals[100:-100]) < 2
    spectrum_file_name = "./tests/data/sim_20170530_134_spectrum.fits"
    # spectrum_file_name = "./tests/data/sim_20170530_176_spectrum.fits"
    assert os.path.isfile(spectrum_file_name)
    spectrum = Spectrum(spectrum_file_name)
    atmgrid_filename = sim_image.replace('sim', 'reduc').replace(
        '.fits', '_atmsim.fits')
    assert os.path.isfile(atmgrid_filename)