ML

Satellite-based mapping of annual canopy height and aboveground biomass in African dense forests

Accurate maps of canopy height (CH) and aboveground biomass (AGB) are needed for monitoring forests over large regions. Producing such data is particularly challenging over the complex, diverse and dense humid tropical forests of Africa where signal saturation observed from optical and radar satellites and complex responses in LiDAR data require advanced mapping techniques to capture high biomass and tall height values. Here, we trained a deep learning (U-Net) model to generate the first annual maps (2019–2022) of top CH at 10 m resolution over the African dense forest region, using Sentinel-1/-2 images trained on LiDAR-derived height data from the Global Ecosystem Dynamics Investigation mission (GEDI).

LUCAS segmentation dataset published

Machine learning data for natural scenes and underrepresented landscapes

Semantic segmentation dataset of Land Use and Coverage Area frame Survey (LUCAS) rural landscape Street View Images

We present an analysis ready segmentation dataset of street level images of natural underrepresented landscapes for use in earth observation based products.