Monitoring temperate forest degradation on Google Earth Engine using Landsat time series analysis

Current estimates of forest degradation are associated with large uncertainties. However, recent advancements in the availability of remote sensing data (e.g., the free data policies of the Landsat and Sentinel Programs) and cloud computing platforms (e.g., Google Earth Engine (GEE)) provide new opp...

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Veröffentlicht in:Remote sensing of environment 2021-11, Vol.265, p.112648, Article 112648
Hauptverfasser: Chen, Shijuan, Woodcock, Curtis E., Bullock, Eric L., Arévalo, Paulo, Torchinava, Paata, Peng, Siqi, Olofsson, Pontus
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Sprache:eng
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Zusammenfassung:Current estimates of forest degradation are associated with large uncertainties. However, recent advancements in the availability of remote sensing data (e.g., the free data policies of the Landsat and Sentinel Programs) and cloud computing platforms (e.g., Google Earth Engine (GEE)) provide new opportunities for monitoring forest degradation. Several recent studies focus on monitoring forest degradation in the tropics, particularly the Amazon, but there are less studies of temperate forest degradation. Compared to the Amazon, temperate forests have more seasonality, which complicates satellite-based monitoring. Here, we present an approach, Continuous Change Detection and Classification - Spectral Mixture Analysis (CCDC-SMA), that combines time series analysis and spectral mixture analysis running on GEE for monitoring abrupt and gradual forest degradation in temperate regions. We used this approach to monitor forest degradation and deforestation from 1987 to 2019 in the country of Georgia. Reference conditions were observed at sample locations selected under stratified random sampling for area estimation and accuracy assessment. The overall accuracy of our map was 91%. The user's accuracy and producer's accuracy of the forest degradation class were 69% and 83%, respectively. The sampling-based area estimate with 95% confidence intervals of forest degradation was 3541 ± 556 km2 (11% of the forest area in 1987), which was significantly larger than the area estimate of deforestation, 158 ± 98 km2. Our approach successfully mapped forest degradation and estimated the area of forest degradation in Georgia with small uncertainty, which earlier studies failed to estimate. •A method, CCDC-SMA, is presented for monitoring temperate forest degradation.•Sensitivity of fraction of endmembers is different in different types of forest.•Using different SMA-based indices in different types of forest improves accuracy.•High accuracy is achieved on the area estimates of forest degradation.•Forest degradation is more widespread than deforestation in Georgia (country).
ISSN:0034-4257
1879-0704
DOI:10.1016/j.rse.2021.112648