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Pixel-Based Image Compositing for Large-Area Dense Time Series Applications and Science

Joanne C. WhiteCanadian Forest Service (Pacific Forestry Centre), Natural Resources Canada, 506 West Burnside Road, Victoria, British Columbia V8Z 1M5, CanadaMichael A. WulderCanadian Forest Service (Pacific Forestry Centre), Natural Resources Canada, 506 West Burnside Road, Victoria, British Columbia V8Z 1M5, CanadaGeordie HobartCanadian Forest Service (Pacific Forestry Centre), Natural Resources Canada, 506 West Burnside Road, Victoria, British Columbia V8Z 1M5, CanadaJ. LutherCanadian Forest Service (Atlantic Forestry Centre), Natural Resources Canada, P.O. Box 960, 20 University Drive, Corner Brook, Newfoundland, A2H 6P9, CanadaTxomin HermosillaDepartment of Forest Resource Management University of British Columbia 2424 Main Mall Vancouver British Columbia V6T 1Z4 CanadaPatrick GriffithsGeography Department, Humboldt-Universität zu Berlin, 10099 Berlin, GermanyNicholas C. CoopsDepartment of Forest Resource Management University of British Columbia 2424 Main Mall Vancouver British Columbia V6T 1Z4 CanadaRonald J. HallCanadian Forest Service (Northern Forestry Centre), Natural Resources Canada, 5320-122nd Street, Edmonton, Alberta, T6H 3S5, CanadaPatrick HostertGeography Department, Humboldt-Universität zu Berlin, 10099 Berlin, GermanyA. DykCanadian Forest Service (Pacific Forestry Centre), Natural Resources Canada, 506 West Burnside Road, Victoria, British Columbia V8Z 1M5, CanadaLuc GuindonCanadian Forest Service (Laurentian Forestry Centre), Natural Resources Canada, 1055 du P.E.P.S, succ. Sainte-Foy, Quebec City, Quebec, G1V 4C7, Canada
2014en
ABI

Аннотация

Free and open access to the more than 40 years of data captured in the Landsat archive, combined with improvements in standardized image products and increasing computer processing and storage capabilities, have enabled the production of large-area, cloud-free, surface reflectance pixel-based image composites. Best-available-pixel (BAP) composites represent a new paradigm in remote sensing that is no longer reliant on scene-based analysis. A time series of these BAP image composites affords novel opportunities to generate information products characterizing land cover, land cover change, and forest structural attributes in a manner that is dynamic, transparent, systematic, repeatable, and spatially exhaustive. Herein, we articulate the information needs associated with forest ecosystem science and monitoring in a Canadian context, and indicate how these new image compositing approaches and subsequent derived products can enable us to address these needs. We highlight some of the issues and opportunities associated with an image compositing approach and demonstrate annual composite products at a national-scale for a single year, with more detailed analyses for two prototype areas using 15 years of Landsat data. Recommendations concerning how to best link compositing decisions to the desired use of the composite (and the information need) are presented, along with future research directions.

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