Data

NSW inundation count dataset: all dates

data.nsw.gov.au
NSW Department of Climate Change, Energy, the Environment and Water (Owner)
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ctx_ver=Z39.88-2004&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Adc&rfr_id=info%3Asid%2FANDS&rft_id=http://data.nsw.gov.au/data/dataset/nsw-inundation-count-dataset-from-30-years-of-landsat-acquisitions-all-dates&rft.title=NSW inundation count dataset: all dates&rft.identifier=http://data.nsw.gov.au/data/dataset/nsw-inundation-count-dataset-from-30-years-of-landsat-acquisitions-all-dates&rft.publisher=data.nsw.gov.au&rft.description=Data Quality StatementNSW Wetland Inventory: Pilot study mapping and classification method statementNSW Inundation Count - All DatesThis raster dataset covers all of NSW and is a raw count of inundated pixel observations from all available Landsat acquisitions from mid 1984 to mid 2016. The dataset was produced by applying a water index to each Landsat scene using the technique developed by Fisher and Danaher (2016). Water indexed images were classified into inundated and not inundated classes using a threshold value of -10. Masking of cloud, cloud shadow and other erroneous pixels resulting from sensor anomalies was undertaken using the F-mask technique (Zhu and Woodcock 2012) and these pixels were allocated a 'no data' value . The classified images (with pixels allocated to 'inundated' or 'not inundated' or 'no data' classes) were then stacked and the number of inundated observations were counted for each pixel in available Landsat scenes. Known commission errors include areas of terrain shadow, building shadow especially in urban areas, and tall dense forest such as some pine plantations. Known omission errors include areas of greater vegetation cover. Potential users should note that inundated observations are only recorded for cloud free observation times and locations, thus inundation events on cloudy days may not have been detected.&rft.creator=Anonymous&rft.date=2024&rft.coverage=140.2734375,-37.66294710278076 140.2734375,-28.08748557934362 153.984375,-28.08748557934362 153.984375,-37.66294710278076 140.2734375,-37.66294710278076&rft_rights=Creative Commons Attribution http://www.opendefinition.org/licenses/cc-by&rft_subject=Landsat&rft_subject=inundation&rft_subject=nsw&rft_subject=nsw wetland inventory&rft_subject=raster&rft_subject=spatial modelling&rft_subject=surface water&rft_subject=wetlands&rft.type=dataset&rft.language=English Access the data

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Brief description

This raster dataset covers all of NSW and is a raw count of inundated pixel observations from all available Landsat acquisitions from mid 1984 to mid 2016. The dataset was produced by applying a water index to each Landsat scene using the technique developed by Fisher and Danaher (2016). Water indexed images were classified into inundated and not inundated classes using a threshold value of -10. Masking of cloud, cloud shadow and other erroneous pixels resulting from sensor anomalies was undertaken using the F-mask technique (Zhu and Woodcock 2012) and these pixels were allocated a 'no data' value . The classified images (with pixels allocated to 'inundated' or 'not inundated' or 'no data' classes) were then stacked and the number of inundated observations were counted for each pixel in available Landsat scenes. Known commission errors include areas of terrain shadow, building shadow especially in urban areas, and tall dense forest such as some pine plantations. Known omission errors include areas of greater vegetation cover. Potential users should note that inundated observations are only recorded for cloud free observation times and locations, thus inundation events on cloudy days may not have been detected.

Full description

Data Quality Statement
NSW Wetland Inventory: Pilot study mapping and classification method statement
NSW Inundation Count - All Dates

This dataset is part of a larger collection

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140.27344,-37.66295 140.27344,-28.08749 153.98438,-28.08749 153.98438,-37.66295 140.27344,-37.66295

147.12890625,-32.875216341062

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