Journal
GISCIENCE & REMOTE SENSING
Volume 59, Issue 1, Pages 1026-1047Publisher
TAYLOR & FRANCIS LTD
DOI: 10.1080/15481603.2022.2096184
Keywords
Remote sensing; land cover mapping; data fusion; sample migration; machine learning; super-resolution
Categories
Funding
- National Key R&D Program of China [2017YFA0604401]
- Tsinghua University Initiative Scientific Research Program [2021Z11GHX002, 20223080017]
- National Key Scientific and Technological Infrastructure project Earth System Science Numerical Simulator Facility (EarthLab)
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Global land cover changes have significant impacts on biodiversity, surface energy balance, and sustainable development. However, the existing global land cover change data have limitations. To address this, we developed the FROM-GLC Plus system, which provides improved spatio-temporal resolution and monitoring capability.
Global land cover has undergone extensive and rapid changes as a result of human activities and climate change. These changes have had a significant impact on biodiversity, the surface energy balance, and sustainable development. Global land cover data underpins research on the development of earth system models, resource management, and evaluation of the ecological environment. However, there are limitations in the classification detail, spatial resolution, and rapid change monitoring capability of global land cover change data. Building on the earlier Global Land Cover Mapping (Finer Resolution Observation and Monitoring - Global Land Cover, FROM-GLC), we developed the improved Global Land Cover Change Monitoring Platform (FROM-GLC Plus) using methods such as multi-season sample space-time migration, multi-source data time series reconstruction, and machine learning. The FROM-GLC Plus system provides a capacity for producing global land cover change data set from the 1980s with flexibility in spatio-temporal details. The preliminary results show that FROM-GLC Plus provides a framework for near real-time land cover mapping at multi-temporal (annual to daily) and multi-resolution (30 m to sub-meter) levels.
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