A high-resolution canopy height model of the Earth
- URL: http://arxiv.org/abs/2204.08322v1
- Date: Wed, 13 Apr 2022 10:34:32 GMT
- Title: A high-resolution canopy height model of the Earth
- Authors: Nico Lang, Walter Jetz, Konrad Schindler, Jan Dirk Wegner
- Abstract summary: We present the first global, wall-to-wall canopy height map at 10 m ground sampling distance for the year 2020.
We have developed a probabilistic deep learning model to retrieve canopy height from Sentinel-2 images anywhere on Earth.
Our model enables consistent, uncertainty-informed worldwide mapping and supports an ongoing monitoring to detect change and inform decision making.
- Score: 22.603549892832753
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The worldwide variation in vegetation height is fundamental to the global
carbon cycle and central to the functioning of ecosystems and their
biodiversity. Geospatially explicit and, ideally, highly resolved information
is required to manage terrestrial ecosystems, mitigate climate change, and
prevent biodiversity loss. Here, we present the first global, wall-to-wall
canopy height map at 10 m ground sampling distance for the year 2020. No single
data source meets these requirements: dedicated space missions like GEDI
deliver sparse height data, with unprecedented coverage, whereas optical
satellite images like Sentinel-2 offer dense observations globally, but cannot
directly measure vertical structures. By fusing GEDI with Sentinel-2, we have
developed a probabilistic deep learning model to retrieve canopy height from
Sentinel-2 images anywhere on Earth, and to quantify the uncertainty in these
estimates. The presented approach reduces the saturation effect commonly
encountered when estimating canopy height from satellite images, allowing to
resolve tall canopies with likely high carbon stocks. According to our map,
only 5% of the global landmass is covered by trees taller than 30 m. Such data
play an important role for conservation, e.g., we find that only 34% of these
tall canopies are located within protected areas. Our model enables consistent,
uncertainty-informed worldwide mapping and supports an ongoing monitoring to
detect change and inform decision making. The approach can serve ongoing
efforts in forest conservation, and has the potential to foster advances in
climate, carbon, and biodiversity modelling.
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