Separating tree systems in agricultural lands from forests using Deep learning
- University of Copenhagen, Denmark
Distinguishing trees on agricultural land from forests is essential for a better understanding of the relationship between forests and human farming activities. However, it is difficult to separate them with remote sensing imagery since they share similar canopy cover, especially on the edge of the amazon rain forest, which has a much-complicated agriculture pattern. Except for annual crops and pasture, there are also lots of agroforestry applications and shifting cultivation, which integrates many tree systems. And those tree systems are not well separated from the forest in the existing land cover map. Recent techniques allow for the mapping of single trees outside of forests, now we take the next step by identifying those diverse tree-involved systems in agricultural land. Here we aim to generate a robust, cost-efficient method to distinguish trees within agricultural land from the forest. We started our exploration from Peruvian Amazon, where the competition for land has increased in the last decades, causing possible adverse effects on livelihoods and ecosystem services. Deep learning models, data sampling, and fine-tuning strategies are tested and optimized with PlanetScope satellite imagery. Our research target is to provide a tool for separating tree systems in farmland from the forest. It can also be used as a base map to explore the dynamic of agriculture transition and its impact on livelihoods and ecosystem services.
How to cite: Yang, W., Ortiz Gonzalo, D., Tong, X., Pierre Johannes Gominski, D., Brandt, M., Kariryaa, A., Reiner, F., and Fensholt, R.: Separating tree systems in agricultural lands from forests using Deep learning, EGU General Assembly 2023, Vienna, Austria, 24–28 Apr 2023, EGU23-8916, https://doi.org/10.5194/egusphere-egu23-8916, 2023.