Get a list of ProcedureComputation objects. ProcedureComputations have a 1:1 mapping with Observations where used.
These may have a number of 2 or more components made up of combinations of Computation and Acquisition records.
The details of the underlying records have been serialised.

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- `/ProcedureComputations.json` - Will return all ProcedureComputations in json format
- `/ProcedureComputations/<object_id>/` - Returns ProcedureComputations object with that id

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GET /api/v2/composites/45110/?format=api
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Content-Type: application/json
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{
    "ob_id": 45110,
    "computationComponent": [
        {
            "ob_id": 45109,
            "uuid": "5406563f6d4844d991b5c46f28d3ca4b",
            "title": "ESA Snow Climate Change Initiative: Derivation of SCFG MODIS v4.0 product.",
            "abstract": "The SCFG product is based on Moderate resolution Imaging Spectroradiometer (MODIS) data on-board the Terra satellite.\r\nThe retrieval method of the snow_cci SCFG product from MODIS data has been further developed and improved by ENVEO (ENVironmental Earth Observation IT GmbH) based on the ESA GlobSnow approach described by Metsämäki et al. (2015) and complemented with a pre-classification module developed by ENVEO. For the SCFG product generation from MODIS, multiple reflective and emissive spectral bands are used. In a first step, clouds are masked using an adapted version of the Simple Cloud Detection Algorithm (SCDA) (Metsämäki et al., 2015). For all remaining pixels, the snow_cci SCFG retrieval method is applied, using spectral bands centred at about 0.55 µm and 1.6 µm, and an emissive band centred at about 11 µm. The snow_cci snow cover mapping method is a two-step approach that first identifies pixels that are largely snow free, followed by SCFG retrieval for remaining pixels. \r\n\r\nThe main differences of the snow_cci snow cover mapping algorithm compared to the GlobSnow algorithm described in Metsämäki et al. (2015) are (i) improvements of the cloud screening approach applicable on a global scale, (ii) the pre-classification of snow free areas on global land areas, (iii) the usage of spatially variable snow free ground reflectance and snow free forest reflectance maps instead of global constant values, (iv) the update of the constant value for wet snow based on analyses of spatially distributed reflectance time series of MODIS data, and (v) the usage of a global forest canopy transmissivity based on tree canopy cover of the year 2000 from Hansen et al. (2013) and forest type layers from Land Cover CCI (Defourny, 2019) of the year 2000. The retrieval approach ensures consistency between the SCFG CRDP v4.0 and the Snow Cover Fraction Viewable from above (SCFV) CRDP 4.0 from MODIS data (https://catalogue.ceda.ac.uk/uuid/ bc13bb02a958449aac139853c4638f32). In non-forested areas, the SCFG and SCFV estimations from MODIS data are the same.\r\n\r\nPermanent snow and ice, and water areas are masked based on the Land Cover CCI data set of the year 2000. Both classes were separately aggregated to the pixel spacing of the SCFG product. Water areas are masked if more than 30 percent of the pixel is classified as water, permanent snow and ice areas are masked if more than 50 percent are identified as such areas in the aggregated map. Salt lakes are masked based on manual delineation from Terra MODIS data. \r\n\r\nThe product uncertainty for observed land pixels is provided as unbiased root mean square error (RMSE) per pixel in the ancillary variable. \r\n\r\nSCFG products and associated layers from individual MODIS tiles are merged into daily global SCFG products.\r\n\r\nEach daily product contains additionally the sensor zenith angle per pixel in degree, and the acquisition time per pixel referring to the scan line time of the MODIS granule used for the classification.\r\n\r\nInput description:\r\n•\tTerra MODIS Collection 6.1 MOD021KM (Level 1B Calibrated Radiances - 1km; DOI: 10.5067/MODIS/MOD021KM.061) and MOD03 (Geolocation - 1km; DOI: 10.5067/MODIS/MOD03.061) products\r\n•\tESA Land Cover CCI project team; Defourny, P. (2019): ESA Land Cover Climate Change Initiative (Land_Cover_cci): Global Land Cover Maps, Version 2.0.7. Centre for Environmental Data Analysis, 14.11.2025. https://catalogue.ceda.ac.uk/uuid/b382ebe6679d44b8b0e68ea4ef4b701c\r\n•\tHansen, M. C., P. V. Potapov, R. Moore, M. Hancher, S. A. Turubanova, A. Tyukavina, D. Thau, S. V. Stehman, S. J. Goetz, T. R. Loveland, A. Kommareddy, A. Egorov, L. Chini, C. O. Justice, and J. R. G. Townshend. 2013. “High-Resolution Global Maps of 21st-Century Forest Cover Change.” Science 342 (15 November): 850–53. Data available on-line from: http://earthenginepartners.appspot.com/science-2013-global-forest. \r\n•\tGlobal auxiliary layers prepared by ENVEO: \r\n•\tpermanent snow and ice area and water mask based on Land Cover map v2.0.7 from 2000 and salt lake mask manually mapped from MODIS data (v2.0, 2025-04-03) \r\n•\tspectral reflectance layers for snow free ground (v4, 2025-05-24) and snow free forest (v4, 2025-05-24), \r\n•\tNormalized Difference Snow Index (NDSI) threshold map (v5.0, 2025-03-19),\r\n•\ttransmissivity map based on tree canopy cover v1.4 for year 2000 (Hansen et al., 2013) and Land Cover map v2.0.7 for year 2000 (v01, 2021-10-01)\r\n\r\nOutput description:",
            "keywords": "",
            "inputDescription": null,
            "outputDescription": null,
            "softwareReference": null,
            "identifier_set": []
        }
    ],
    "acquisitionComponent": [
        {
            "ob_id": 32512,
            "independentInstrument": [],
            "instrumentplatformpair_set": [
                {
                    "ob_id": 12550,
                    "platform": "https://api.catalogue.ceda.ac.uk/api/v2/platforms/10897/?format=api",
                    "instrument": "https://api.catalogue.ceda.ac.uk/api/v2/instruments/10898/?format=api",
                    "relatedTo": {
                        "ob_id": 32512,
                        "uuid": "b7f993e0c3e745dc9975da8aa580a654",
                        "short_code": "acq"
                    }
                }
            ]
        }
    ],
    "identifier_set": [],
    "responsiblepartyinfo_set": [
        "https://api.catalogue.ceda.ac.uk/api/v2/rpis/215934/?format=api",
        "https://api.catalogue.ceda.ac.uk/api/v2/rpis/215935/?format=api"
    ]
}