Monitoring tropical forest dynamics using Landsat time series and community-based data
2015
Vries, B. R. de
Tropical forests cover a significant portion of the earth's surface and provide a range of.
Afficher plus [+] Moins [-]ecosystem services, but are under increasing threat due to human activities. Deforestation.
Afficher plus [+] Moins [-]and forest degradation in the tropics are responsible for a large share of global CO2.
Afficher plus [+] Moins [-]emissions. As a result, there has been increased attention and effort invested in the.
Afficher plus [+] Moins [-]reduction of emission from deforestation and degradation and the protection of remaining.
Afficher plus [+] Moins [-]tropical forests in recent years. Methods for tropical forest monitoring are therefore vital.
Afficher plus [+] Moins [-]to track progress on these goals. Two data streams in particular have the potential to.
Afficher plus [+] Moins [-]play an important role in forest monitoring systems. First, satellite remote sensing is.
Afficher plus [+] Moins [-]recognized as a vital technology in supporting the monitoring of tropical forests, of which.
Afficher plus [+] Moins [-]the Landsat family of satellite sensors has emerged as one of the most important. Owing.
Afficher plus [+] Moins [-]to its open data policy, a large range of methods using dense Landsat time series have.
Afficher plus [+] Moins [-]been developed recently which have the potential to greatly enhance forest monitoring.
Afficher plus [+] Moins [-]in the tropics. Second, community-based monitoring is supported in many developing.
Afficher plus [+] Moins [-]countries as a way to engage forest communities and lower costs of monitoring activities.
Afficher plus [+] Moins [-]The development of operational monitoring systems will need to consider how these data.
Afficher plus [+] Moins [-]streams can be integrated for the effective monitoring of forest dynamics.
Afficher plus [+] Moins [-]This thesis is concerned with the monitoring of tropical forest dynamics using a combi-.
Afficher plus [+] Moins [-]nation of dense Landsat time series and community-based monitoring data. The added.
Afficher plus [+] Moins [-]value conferred by these data streams in monitoring deforestation, degradation and re-.
Afficher plus [+] Moins [-]growth in tropical forests is assessed. This goal is approached from two directions. First,.
Afficher plus [+] Moins [-]the application of econometric structural change monitoring methods to Landsat time.
Afficher plus [+] Moins [-]series is explored and the efficacy and accuracy of these methods over several tropical.
Afficher plus [+] Moins [-]forest sites is tested. Second, the integration of community-based monitoring data with.
Afficher plus [+] Moins [-]Landsat time series is explored in an operational setting. Using local expert monitoring.
Afficher plus [+] Moins [-]data, the reliability and consistency of these data against very high resolution optical.
Afficher plus [+] Moins [-]imagery are assessed. A bottom-up approach to characterize forest change in high the-.
Afficher plus [+] Moins [-]matic detail using a priori community-based observations is then developed based on.
Afficher plus [+] Moins [-]these findings.
Afficher plus [+] Moins [-]Chapter 2 presents a robust data-driven approach to detect small-scale forest disturbances.
Afficher plus [+] Moins [-]driven by small-holder agriculture in a montane forest in southwestern Ethiopia. The.
Afficher plus [+] Moins [-]Breaks For Additive Season and Trend Monitoring (BFAST Monitor) method is applied.
Afficher plus [+] Moins [-]to Landsat NDVI time series using sequentially defined one-year monitoring periods. In.
Afficher plus [+] Moins [-]addition to time series breakpoints, the median magnitude of residuals (expected versus.
Afficher plus [+] Moins [-]observed observations) is used to characterize change. Overall disturbances are mapped.
Afficher plus [+] Moins [-]with producer's and user's accuracies of 73%. Using ordinal logistic regression (OLR).
Afficher plus [+] Moins [-]models, the extent to which degradation and deforestation can be separately mapped is.
Afficher plus [+] Moins [-]explored. The OLR models fail to distinguish between deforestation and degradation,.
Afficher plus [+] Moins [-]however, owing to the subtle and diffuse nature of forest degradation processes.
Afficher plus [+] Moins [-]Chapter 3 expands upon the approach presented in Chapter 2 by tracking post-disturbance.
Afficher plus [+] Moins [-]forest regrowth in a lowland tropical forest in southeastern Peru using Landsat Normalized.
Afficher plus [+] Moins [-]Difference Moisture Index (NDMI) time series. Disturbance between 1999 and 2013 are.
Afficher plus [+] Moins [-]mapped using the same sequential monitoring method as in Chapter 2. Pixels where.
Afficher plus [+] Moins [-]disturbances are detected are then monitored for follow-up regrowth using the reverse of.
Afficher plus [+] Moins [-]the method employed in Chapter 2. The time of regrowth onset is recorded based on a.
Afficher plus [+] Moins [-]comparison to defined stable history period. Disturbances are mapped with 91% accuracy,.
Afficher plus [+] Moins [-]while post-disturbance regrowth is mapped with a total accuracy of 61% for disturbances.
Afficher plus [+] Moins [-]before 2006.
Afficher plus [+] Moins [-]Chapter 4 and 5 explore the integration of community-based forest monitoring data and.
Afficher plus [+] Moins [-]remote sensing data streams. Major advantages conferred by community-based forest dis-.
Afficher plus [+] Moins [-]turbance observations include the ability to report on drivers and other thematic details.
Afficher plus [+] Moins [-]of forest change and the ability to detect low-level forest degradation before these changes.
Afficher plus [+] Moins [-]are visible above the forest canopy. Chapter 5 builds on these findings and presents a.
Afficher plus [+] Moins [-]novel bottom-up approach to characterize forest changes using local expert disturbance.
Afficher plus [+] Moins [-]reports to calibrate and validate forest change models based on Landsat time series. Using.
Afficher plus [+] Moins [-]random forests and a selection of Landsat spectral and temporal metrics, models describ-.
Afficher plus [+] Moins [-]ing forest state variables (deforested, degraded or stable) at a given time are produced.
Afficher plus [+] Moins [-]As local expert data are continually acquired, the ability of these models to predict forest.
Afficher plus [+] Moins [-]degradation are shown to improve.
Afficher plus [+] Moins [-]Chapter 6 summarizes the main findings of the thesis and provides a future outlook, given.
Afficher plus [+] Moins [-]the prospect of increasing availability of satellite and in situ data for tropical forest mon-.
Afficher plus [+] Moins [-]itoring. This chapter argues that forest change methods should strive to utilize satellite.
Afficher plus [+] Moins [-]time series and ground data to their maximum potential. As “big data" emerges in the.
Afficher plus [+] Moins [-]field of earth observation, new data streams need to be accommodated in monitoring.
Afficher plus [+] Moins [-]methods. Operational forest monitoring systems that are able to integrate such diverse.
Afficher plus [+] Moins [-]data streams can support broader forest monitoring goals such as quantitative monitoring.
Afficher plus [+] Moins [-]of forest dynamics. Even with a wealth of time series based forest disturbance methods.
Afficher plus [+] Moins [-]developed recently, forest monitoring systems require locally calibrated forest change esti-.
Afficher plus [+] Moins [-]mates with higher spatial, temporal and thematic resolution to support a variety of forest.
Afficher plus [+] Moins [-]monitoring objectives.
Afficher plus [+] Moins [-] .
Afficher plus [+] Moins [-]Mots clés AGROVOC
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