Ejemplo n.º 1
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    def test_output_datatype(self):
        """Test resampling method using a scaling factor of 4"""
        scale = 4  # assumes square cells
        self.ifgs.append(DEM(SML_TEST_DEM_TIF))
        self.ifg_paths = [i.data_path for i in self.ifgs] + [SML_TEST_DEM_TIF]
        self.headers.append(SML_TEST_DEM_HDR)

        cext = self._custom_extents_tuple()
        xlooks = ylooks = scale
        prepare_ifgs(self.ifg_paths,
                     CUSTOM_CROP,
                     xlooks,
                     ylooks,
                     thresh=1.0,
                     user_exts=cext,
                     headers=self.headers)

        for i in self.ifg_paths:
            mlooked_ifg = mlooked_path(i, xlooks, CUSTOM_CROP)
            ds1 = DEM(mlooked_ifg)
            ds1.open()
            ds2 = DEM(i)
            ds2.open()
            self.assertEqual(
                ds1.dataset.GetRasterBand(1).DataType,
                ds2.dataset.GetRasterBand(1).DataType)
            ds1 = ds2 = None
Ejemplo n.º 2
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 def test_multilooked_projection_same_as_geotiff(self):
     xlooks = ylooks = 1
     prepare_ifgs(self.ifg_paths, MAXIMUM_CROP, xlooks, ylooks)
     mlooked_paths = [
         mlooked_path(f, crop_out=MAXIMUM_CROP, looks=xlooks)
         for f in self.ifg_paths
     ]
     self.assert_projection_equal(self.ifg_paths + mlooked_paths)
Ejemplo n.º 3
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    def test_multilook(self):
        """Test resampling method using a scaling factor of 4"""
        scale = 4  # assumes square cells
        self.ifgs.append(DEM(SML_TEST_DEM_TIF))
        self.ifg_paths = [i.data_path for i in self.ifgs]
        # append the dem header
        self.headers.append(SML_TEST_DEM_HDR)
        cext = self._custom_extents_tuple()
        xlooks = ylooks = scale
        prepare_ifgs(self.ifg_paths,
                     CUSTOM_CROP,
                     xlooks,
                     ylooks,
                     thresh=1.0,
                     user_exts=cext,
                     headers=self.headers)

        for n, ipath in enumerate([self.exp_files[3], self.exp_files[7]]):
            i = Ifg(ipath)
            i.open()
            self.assertEqual(i.dataset.RasterXSize, 20 / scale)
            self.assertEqual(i.dataset.RasterYSize, 28 / scale)

            # verify resampling
            path = join(PREP_TEST_TIF, "%s.tif" % n)
            ds = gdal.Open(path)
            src_data = ds.GetRasterBand(2).ReadAsArray()
            exp_resample = multilooking(src_data, scale, scale, thresh=0)
            self.assertEqual(exp_resample.shape, (7, 5))
            assert_array_almost_equal(exp_resample, i.phase_band.ReadAsArray())
            ds = None
            i.close()
            os.remove(ipath)

        # verify DEM has been correctly processed
        # ignore output values as resampling has already been tested for phase
        exp_dem_path = join(SML_TEST_DEM_DIR,
                            'roipac_test_trimmed_4rlks_3cr.tif')
        self.assertTrue(exists(exp_dem_path))
        orignal_dem = DEM(SML_TEST_DEM_TIF)
        orignal_dem.open()
        dem_dtype = orignal_dem.dataset.GetRasterBand(1).DataType
        orignal_dem.close()
        dem = DEM(exp_dem_path)
        dem.open()

        # test multilooked dem is of the same datatype as the original dem tif
        self.assertEqual(dem_dtype, dem.dataset.GetRasterBand(1).DataType)

        self.assertEqual(dem.dataset.RasterXSize, 20 / scale)
        self.assertEqual(dem.dataset.RasterYSize, 28 / scale)
        data = dem.height_band.ReadAsArray()
        self.assertTrue(data.ptp() != 0)
        # close ifgs
        dem.close()
        for i in self.ifgs:
            i.close()
        os.remove(exp_dem_path)
Ejemplo n.º 4
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 def setUp(self):
     from tests.common import small_data_setup
     self.ifgs = small_data_setup()
     self.ifg_paths = [i.data_path for i in self.ifgs]
     prepare_ifgs(self.ifg_paths, crop_opt=1, xlooks=1, ylooks=1)
     looks_paths = [mlooked_path(d, looks=1, crop_out=1)
                    for d in self.ifg_paths]
     self.ifgs_with_nan = [Ifg(i) for i in looks_paths]
     for ifg in self.ifgs_with_nan:
         ifg.open()
Ejemplo n.º 5
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    def test_nodata(self):
        """Verify NODATA value copied correctly (amplitude band not copied)"""
        xlooks = ylooks = 1
        prepare_ifgs(self.ifg_paths, MINIMUM_CROP, xlooks, ylooks)

        for ex in [self.exp_files[0], self.exp_files[4]]:
            ifg = Ifg(ex)
            ifg.open()
            # NB: amplitude band doesn't have a NODATA value
            self.assertTrue(
                isnan(ifg.dataset.GetRasterBand(1).GetNoDataValue()))
            ifg.close()
        for i in self.ifgs:
            i.close()
Ejemplo n.º 6
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    def test_same_size_multilooking(self):
        ifgs = same_exts_ifgs()
        ifg_data_paths = [d.data_path for d in ifgs]
        xlooks = ylooks = 2
        prepare_ifgs(ifg_data_paths, ALREADY_SAME_SIZE, xlooks, ylooks)

        looks_paths = [mlooked_path(d, looks=xlooks, crop_out=ALREADY_SAME_SIZE)
                       for d in ifg_data_paths]
        mlooked = [Ifg(i) for i in looks_paths]
        for m in mlooked:
            m.open()
        self.assertEqual(len(mlooked), 2)

        for ifg in mlooked:
            self.assertAlmostEqual(ifg.x_step, xlooks * self.xs)
            self.assertAlmostEqual(ifg.x_step, ylooks * self.xs)
Ejemplo n.º 7
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 def test_already_same_size(self):
     # should do nothing as layers are same size & no multilooking required
     ifgs = same_exts_ifgs()
     ifg_data_paths = [d.data_path for d in ifgs]
     res_tup = prepare_ifgs(ifg_data_paths, ALREADY_SAME_SIZE, 1, 1)
     res = [r[1] for r in res_tup]
     self.assertTrue(all(res))
Ejemplo n.º 8
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    def test_nans(self):
        """Verify NaNs replace 0 in the multilooked phase band"""
        xlooks = ylooks = 1
        prepare_ifgs(self.ifg_paths, MINIMUM_CROP, xlooks, ylooks)

        for ex in [self.exp_files[0], self.exp_files[4]]:
            ifg = Ifg(ex)
            ifg.open()

            phase = ifg.phase_band.ReadAsArray()
            self.assertFalse((phase == 0).any())
            self.assertTrue((isnan(phase)).any())
            ifg.close()

        self.assertAlmostEqual(nanmax(phase), 4.247, 3)  # copied from gdalinfo
        self.assertAlmostEqual(nanmin(phase), 0.009, 3)  # copied from gdalinfo
        for i in self.ifgs:
            i.close()
Ejemplo n.º 9
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 def setUp(self):
     from tests.common import small_data_setup
     self.ifgs = small_data_setup()
     self.ifg_paths = [i.data_path for i in self.ifgs]
     params = Configuration(common.TEST_CONF_ROIPAC).__dict__
     self.headers = [
         roipac.roipac_header(i.data_path, params) for i in self.ifgs
     ]
     prepare_ifgs(self.ifg_paths,
                  crop_opt=1,
                  xlooks=1,
                  ylooks=1,
                  headers=self.headers)
     looks_paths = [
         mlooked_path(d, looks=1, crop_out=1) for d in self.ifg_paths
     ]
     self.ifgs_with_nan = [Ifg(i) for i in looks_paths]
     for ifg in self.ifgs_with_nan:
         ifg.open()
Ejemplo n.º 10
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    def test_custom_extents(self):
        xlooks = ylooks = 1
        cext = self._custom_extents_tuple()
        prepare_ifgs(self.ifg_paths, CUSTOM_CROP, xlooks, ylooks,
                     user_exts=cext)

        ifg = Ifg(self.exp_files[2])
        ifg.open()

        gt = ifg.dataset.GetGeoTransform()
        exp_gt = (cext.xfirst, self.xs, 0, cext.yfirst, 0, self.ys)

        for i, j in zip(gt, exp_gt):
            self.assertAlmostEqual(i, j)
        self.assert_geotransform_equal([self.exp_files[2], self.exp_files[6]])

        # close ifgs
        ifg.close()
        for i in self.ifgs:
            i.close()
Ejemplo n.º 11
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    def test_min_extents(self):
        """Test ifgcropopt=1 crops datasets to min extents."""
        xlooks = ylooks = 1
        prepare_ifgs(self.ifg_paths, MINIMUM_CROP, xlooks, ylooks)
        ifg = Ifg(self.exp_files[0])
        ifg.open()

        # output files should have same extents
        # NB: also verifies gdalwarp correctly copies geotransform across
        # NB: expected data copied from gdalinfo output
        gt = ifg.dataset.GetGeoTransform()
        exp_gt = (150.911666666, 0.000833333, 0,
                  -34.172499999, 0, -0.000833333)
        for i, j in zip(gt, exp_gt):
            self.assertAlmostEqual(i, j)
        self.assert_geotransform_equal([self.exp_files[0], self.exp_files[4]])

        ifg.close()
        for i in self.ifgs:
            i.close()
Ejemplo n.º 12
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    def test_default_max_extents(self):
        """Test ifgcropopt=2 crops datasets to max bounding box extents."""
        xlooks = ylooks = 1
        prepare_ifgs(self.ifg_paths, MAXIMUM_CROP, xlooks, ylooks)
        for f in [self.exp_files[1], self.exp_files[5]]:
            self.assertTrue(exists(f), msg="Output files not created")

        # output files should have same extents
        # NB: also verifies gdalwarp correctly copies geotransform across
        ifg = Ifg(self.exp_files[1])
        ifg.open()
        gt = ifg.dataset.GetGeoTransform()

        # copied from gdalinfo output
        exp_gt = (150.91, 0.000833333, 0, -34.17, 0, -0.000833333)
        for i, j in zip(gt, exp_gt):
            self.assertAlmostEqual(i, j)

        self.assert_geotransform_equal([self.exp_files[1], self.exp_files[5]])

        ifg.close()
        for i in self.ifgs:
            i.close()
Ejemplo n.º 13
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 def test_open_ifg_from_dataset(self):
     """
     Test showing open() can not be used for Ifg created with
     gdal.Dataset object as Dataset has already been read in
     """
     paths = [self.ifg.data_path]
     mlooked_phase_data = prepifg_helper.prepare_ifgs(
         paths,
         crop_opt=prepifg_helper.ALREADY_SAME_SIZE,
         xlooks=2,
         ylooks=2,
         write_to_disc=False)
     mlooked = [Ifg(m[1]) for m in mlooked_phase_data]
     self.assertRaises(RasterException, mlooked[0].open)
Ejemplo n.º 14
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def remove_orbital_error(ifgs: Iterable,
                         params: dict,
                         preread_ifgs=None) -> None:
    """
    Wrapper function for PyRate orbital error removal functionality.

    NB: the ifg data is modified in situ, rather than create intermediate
    files. The network method assumes the given ifgs have already been reduced
    to a minimum spanning tree network.

    :param list ifgs: List of interferograms class objects
    :param dict params: Dictionary containing configuration parameters
    :param dict preread_ifgs: Dictionary containing information specifically
        for MPI jobs (optional)

    :return: None - interferogram phase data is updated and saved to disk
    """

    ifg_paths = [i.data_path
                 for i in ifgs] if isinstance(ifgs[0], Ifg) else ifgs

    mlooked = None
    # mlooking is not necessary for independent correction
    # can use multiple procesing if write_to_disc=True
    if params[cf.ORBITAL_FIT_METHOD] == NETWORK_METHOD:
        mlooked_dataset = prepifg_helper.prepare_ifgs(
            ifg_paths,
            crop_opt=prepifg_helper.ALREADY_SAME_SIZE,
            xlooks=params[cf.ORBITAL_FIT_LOOKS_X],
            ylooks=params[cf.ORBITAL_FIT_LOOKS_Y],
            thresh=params[cf.NO_DATA_AVERAGING_THRESHOLD],
            write_to_disc=False)
        mlooked = [Ifg(m[1]) for m in mlooked_dataset]

        for m in mlooked:
            m.initialize()
            m.nodata_value = params[cf.NO_DATA_VALUE]
            m.convert_to_nans()
            m.convert_to_mm()

    _orbital_correction(ifgs,
                        params,
                        mlooked=mlooked,
                        preread_ifgs=preread_ifgs)