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<Esri>
<CreaDate>20250326</CreaDate>
<CreaTime>08075300</CreaTime>
<ArcGISFormat>1.0</ArcGISFormat>
<SyncOnce>TRUE</SyncOnce>
<MapLyrSync>TRUE</MapLyrSync>
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<dataIdInfo>
<idCitation>
<resTitle>Shoreline_Mapping_Vector_Data</resTitle>
</idCitation>
<idAbs>With the changing climate conditions, marine traffic along Canada’s coastal regions has increased over the past couple of decades and the need to improve our state of preparedness for oil spill- related emergencies is critical. Baseline coastal information, such as shoreline form, substrate, and vegetation type, is required for prioritizing operations, coordinating onsite spill response activities (i.e. Shoreline Cleanup Assessment Technique [SCAT]), and providing information for wildlife and ecosystem management. Between 2010 and 2019, georeferenced high-definition videography and photos were collected for various study sites across coastal Canada. The study areas include Beaufort Sea, Mackenzie Delta channels and Banks Island in the western Canadian Arctic; James Bay, Hudson Bay, Nunavik, Resolute Bay, Victoria Strait, Baffin Island and Coronation Gulf in the eastern Canadian Arctic; Labrador, Bay of Fundy and Chedabucto Bay in Atlantic Canada and Haida Gwaii, North Vancouver Island, Mainland BC and Burrard Inlet in the northern Pacific.
Data was collected during ice-free and low tide conditions (where applicable) between July and September. Low-altitude helicopter surveys were conducted at each study site to capture video of the shoreline characteristics. In addition to acquiring videography, ground-based observations were recorded in several locations for validation.
Shoreline segmentation was then carried out by manual interpretation of the oblique videography and the photos aided by ancillary data. This involved splitting and classifying the shoreline vectors based on homogeneity of the upper intertidal zone. Detailed geomorphological information (i.e. shoreline type, substrate, slope, height, accessibility etc.) describing the upper intertidal, lower intertidal, supratidal and backshore zones was extracted from the video and entered into a geospatial database using a customized data collection form. In addition, biological and physical characteristics like biobands (kelp, lichen, algae etc.), water features, fauna, human use, infrastructure, debris type etc. observed along the coast were recorded.
The data was also validated through ground observations (when available) and a second interpreter QA (quality analysis) was performed on each dataset (excluding Nunavik) to ensure high quality and consistency. The final dataset contains segments ranging in length from 150 m to 2500 m (except Nunavik). The minimum segment length is 45 m for study areas in the west coast that were surveyed in 2018-2019. In total, about 33,700 km of shoreline were segmented within all the survey zones.</idAbs>
<searchKeys>
<keyword>Canadian Arctic</keyword>
<keyword>Canadian Atlantic</keyword>
<keyword>Canadian Pacific</keyword>
<keyword>shorelines</keyword>
<keyword>oil spill</keyword>
<keyword>emergency preparedness</keyword>
<keyword>sensitivity mapping</keyword>
<keyword>shoreline segmentation</keyword>
<keyword>videography</keyword>
<keyword>Beaufort Sea</keyword>
<keyword>Banks Island</keyword>
<keyword>Mackenzie Delta channels</keyword>
<keyword>Kitimat</keyword>
<keyword>Haida Gwaii</keyword>
<keyword>Vancouver Island</keyword>
<keyword>British Columbia</keyword>
<keyword>Hudson Bay</keyword>
<keyword>James Bay</keyword>
<keyword>Nunavik</keyword>
<keyword>Bay of Fundy</keyword>
<keyword>Chedabucto Bay</keyword>
<keyword>Victoria Strait</keyword>
<keyword>Baffin Island</keyword>
<keyword>Coronation Gulf</keyword>
<keyword>Burrard Inlet</keyword>
<keyword>Resolute Bay</keyword>
<keyword>Labrador</keyword>
<keyword>coastal management</keyword>
<keyword>coastal studies</keyword>
</searchKeys>
<idPurp>This map represents the various study areas along the east, west and north coasts of Canada where shoreline vector data was collected.</idPurp>
<idCredit>Environment and Climate Change Canada</idCredit>
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