Пример #1
0
def der_optical(dates):

    client = Client(n_workers=12)

    boi = ['red', 'blue', 'green', 'nir', 'swir1', 'swir2']

    vars_loc = os.environ['WIN_SVR_DATA'] + 'Saldana/vars/'

    files = list(filter(re.compile(r'^opt_.*').search, os.listdir(vars_loc)))
    files = list(map(lambda x: vars_loc + x, files))

    dataset = xr.open_mfdataset(files,
                                chunks={
                                    'y': 1000,
                                    'x': 750,
                                    'time': -1
                                })

    print('Concat Dataset\n')
    print(dataset)

    _location = os.environ['WIN_SVR_DATA'] + 'Saldana/features/'

    itp.interpolate_dataset(dataset,
                            _location,
                            boi,
                            date_of_analysis=dates,
                            der=True)

    print('Dataset interpolation done!\n')
Пример #2
0
def main_optical(dates):

    saldana = regionstack.regionStack('Saldana', attrs=['S2', 'LC08'])

    #saldana.harmonize_L8()

    boi = ['red', 'blue', 'green', 'nir', 'swir1', 'swir2']

    vars_loc = os.environ['WIN_SVR_DATA'] + 'Saldana/vars/'

    for band in boi:
        if not os.path.isfile(vars_loc + 'opt_' + band + '.nc'):

            ## TO-DO add isel for relevant dates
            sentinel = saldana.S2[
                band]  #.isel(time=slice(min(dates)-120?D-security_margin, max(dates)+16D+security_margin))

            landsat = saldana.LC08[
                band]  #.isel(time=slice(min(dates)-120?D, max(dates)+16D))

            aligned = xr.align(sentinel, landsat, exclude={'time'})

            da = xr.concat([aligned[0], aligned[1]], dim='time')

            da.sortby('time').to_netcdf(vars_loc + 'opt_' + band + '.nc')

    client = Client(n_workers=12)

    client.upload_file('c_Class_Models/interpolatets.py')

    files = list(filter(re.compile(r'^opt_.*').search, os.listdir(vars_loc)))
    files = list(map(lambda x: vars_loc + x, files))

    print('Reading concatenated Dataset')
    dataset = xr.open_mfdataset(files,
                                chunks={
                                    'y': 1000,
                                    'x': 750,
                                    'time': -1
                                })

    print('Concat Dataset\n')
    print(dataset)

    _location = os.environ['WIN_SVR_DATA'] + 'Saldana/features/'

    itp.interpolate_dataset(dataset,
                            _location,
                            boi,
                            date_of_analysis=dates,
                            der=False)

    print('Dataset interpolation done!\n')
Пример #3
0
def main_radar_text(dates):

    saldana = regionstack.regionStack(
        'Saldana', attrs=['S1_ASCENDING_GLCM', 'S1_DESCENDING_GLCM'])

    boi = [
        'VV_ASM', 'VV_Contrast', 'VV_Dissimilarity', 'VV_Energy', 'VV_Entropy',
        'VV_GLCMCorrelation', 'VV_GLCMMean', 'VV_GLCMVariance',
        'VV_Homogeneity'
    ]

    vars_loc = os.environ['WIN_SVR_DATA'] + 'Saldana/vars/'

    for band in boi:

        if not os.path.isfile(vars_loc + 'rad_' + band + '.nc'):
            asc = saldana.S1_ASCENDING_GLCM[band]

            dsc = saldana.S1_DESCENDING_GLCM[band]

            da = xr.concat([asc, dsc], dim='time')

            print('{} band was concatenated. Writing DataArray'.format(band))

            da.to_netcdf(vars_loc + 'rad_' + band + '.nc')

    client = Client(n_workers=12)

    client.upload_file('b_Temporal_Stack/interpolatets.py')

    files = list(filter(re.compile(r'^rad_.*').search, os.listdir(vars_loc)))
    files = list(map(lambda x: vars_loc + x, files))

    print('Reading concatenated Dataset')
    dataset = xr.open_mfdataset(files,
                                chunks={
                                    'y': 1000,
                                    'x': 750,
                                    'time': -1
                                })

    print('Concat Dataset\n')
    print(dataset)

    _location = os.environ['WIN_SVR_DATA'] + 'Saldana/features/'

    itp.interpolate_dataset(dataset, _location, boi, date_of_analysis=dates)

    itp.interpolate_dataset(dataset,
                            _location,
                            boi,
                            date_of_analysis=dates,
                            der=True)