Skip to main content
Submitted by admin on
October 2024
Smallholder agriculture productivity must increase in Ethiopia to meet the demands of a growing population to avert food insecurity
CONTINUED FOREST PROTECTION MUST BE CORE TO COMMUNITY DEVELOPMENT
  • Carbon payment mechanisms to incentive sustainable forest management have an impact on forest loss
  • Analyses integrating remote sensing and socioeconomic data can quantify the effectiveness of Village Sustainability Planning program on forest and land use
  • With the rise carbon payment mechanisms for forest conservation, urgent need for such analyses is needed to inform current and future sustainable planning
  • NASA’s role in Earth observation is essential for measuring and monitoring global investments in carbon markets

How is land cover/use classified?

A base UNet convolutional neural network (CNN) deep learning model developed in Senegal using a spatiotemporal diversified dataset was used throughout the Amhara region of Ethiopia (>200,000 sq. km). Using transfer learning techniques with a few high-quality additional training datasets developed by the LIFT-Ethiopia project and further enhanced by our research project [1,2], an ensemble of 3 different fine-tuned CNN architectures was used on WorldView 2 m resolution imagery [1,3]. Land cover was classified with an overall accuracy > 90%. Shrub/trees, settlements, and croplands were classified with an accuracy > 95% (Figure 1).

 

Figure 1: Burie city suburbs (2100 m – 2250 m amsl): (bottom-left) location map of the study area; (top-left) 2022-02-04 WV03 imagery (2 m); (top-right) classified map by this research (2 m); (bottom-right) corresponding ESA’s World Cover classified map from Sentinel-2 (10 m).

Why is this Important?

Observational scale matters when mapping sub- hectare fields. Our LCLU product is the best

available in the region and will be beneficial in making informed decisions by the Amhara Region GOs, and NGOs on sustainable land use management, precision agriculture, ecosystem services modeling, climate change mitigation, urban planning, market management, and food security programs. Particularly, the cropland layer output can be used as a baseline for recurrent seasonal yield estimation and forecasts that are useful for planning purposes to alleviate food insecurity.

The way forward?

The CNN models were successfully tested on open-source datasets, such as Planet, Sentinel 2, and Harmonized Landsat Sentinel (HLS). Recurrent model application for seasonal/annual monitoring could be performed by government officials and NGOs in the study area and elsewhere. Technology transfer to concerned sectors, other relevant NGOs, and the wider research community will empower them with information to make sustainable land use

[1] Li et al., (2022). J. Sens., 22(12), 4626. [2] Neigh et al., (2019). IEEE IGARSS 2019, 5397–5400. [3] Défossez wt al., (2020). arXiv:2003.02395. Land Use Science in Action

Project Investigator: Alemu et al, NASA GSFC, MD, USA; Email: woubet.g.alemu@nasa.gov The opinions expressed are solely the PI's and do not reflect NASA's or the US Government's views.