2023
DOI: 10.3390/rs15102667
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An Approach Integrating Multi-Source Data with LandTrendr Algorithm for Refining Forest Recovery Detection

Abstract: Disturbances to forests are getting worse with climate change and urbanization. Assessing the functionality of forest ecosystems is challenging because it requires not only a large amount of input data but also comprehensive estimation indicator methods. The object of the evaluation index of forest ecosystem restoration relies on the ecosystem function instead of the area. To develop the appropriate index with ecological implications, we built the hybrid assessment approach including ecosystem structure-functi… Show more

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Cited by 2 publications
(1 citation statement)
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“…It was developed based on the study of multi-temporal change detection methods using Landsat data and can flexibly capture long-term ecological changes. Since its inception, the LandTrendr algorithm has been widely applied in forest disturbance and recovery detection [28][29][30], marsh vegetation and hydrological disturbance and restoration [31], land cover change trajectories [32], surface water dynamics [33], as well as mining disturbance and restoration [13,34,35]. The previous studies illustrated the value of the trajectory-based LandTrendr algorithm for mine rehabilitation studies in South Africa, and vegetation disturbance and restoration in Australia and China.…”
Section: Introductionmentioning
confidence: 99%
“…It was developed based on the study of multi-temporal change detection methods using Landsat data and can flexibly capture long-term ecological changes. Since its inception, the LandTrendr algorithm has been widely applied in forest disturbance and recovery detection [28][29][30], marsh vegetation and hydrological disturbance and restoration [31], land cover change trajectories [32], surface water dynamics [33], as well as mining disturbance and restoration [13,34,35]. The previous studies illustrated the value of the trajectory-based LandTrendr algorithm for mine rehabilitation studies in South Africa, and vegetation disturbance and restoration in Australia and China.…”
Section: Introductionmentioning
confidence: 99%