High carbon stock mapping at large scale with optical satellite imagery
and spaceborne LIDAR
- URL: http://arxiv.org/abs/2107.07431v1
- Date: Thu, 15 Jul 2021 16:21:21 GMT
- Title: High carbon stock mapping at large scale with optical satellite imagery
and spaceborne LIDAR
- Authors: Nico Lang, Konrad Schindler, Jan Dirk Wegner
- Abstract summary: Deforestation, which causes high carbon emissions and threatens biodiversity, is often linked to agricultural expansion.
We propose an automated approach that aims to support conservation and sustainable land use planning decisions.
A deep learning approach is developed that estimates canopy height for each 10 m Sentinel-2 pixel by learning from sparse GEDI LIDAR reference data.
We show that these wall-to-wall maps of canopy top height are predictive for classifying HCS forests and degraded areas with an overall accuracy of 86 % and produce a first high carbon stock map for Indonesia, Malaysia, and the Philippines.
- Score: 27.25600860698314
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The increasing demand for commodities is leading to changes in land use
worldwide. In the tropics, deforestation, which causes high carbon emissions
and threatens biodiversity, is often linked to agricultural expansion. While
the need for deforestation-free global supply chains is widely recognized,
making progress in practice remains a challenge. Here, we propose an automated
approach that aims to support conservation and sustainable land use planning
decisions by mapping tropical landscapes at large scale and high spatial
resolution following the High Carbon Stock (HCS) approach. A deep learning
approach is developed that estimates canopy height for each 10 m Sentinel-2
pixel by learning from sparse GEDI LIDAR reference data, achieving an overall
RMSE of 6.3 m. We show that these wall-to-wall maps of canopy top height are
predictive for classifying HCS forests and degraded areas with an overall
accuracy of 86 % and produce a first high carbon stock map for Indonesia,
Malaysia, and the Philippines.
Related papers
- The unrealized potential of agroforestry for an emissions-intensive agricultural commodity [48.652015514785546]
We use machine learning to generate estimates of shade-tree cover and carbon stocks across a West African region.
We find that existing shade-tree cover is low, and not spatially aligned with climate threat.
But we also find enormous unrealized potential for the sector to counterbalance a large proportion of their high carbon footprint annually.
arXiv Detail & Related papers (2024-10-28T10:02:32Z) - First Mapping the Canopy Height of Primeval Forests in the Tallest Tree Area of Asia [6.826460268652235]
We have developed the world's first canopy height map of the distribution area of world-level giant trees.
This mapping is crucial for discovering more individual and community world-level giant trees.
arXiv Detail & Related papers (2024-04-23T01:45:55Z) - Estimation of forest height and biomass from open-access multi-sensor
satellite imagery and GEDI Lidar data: high-resolution maps of metropolitan
France [0.0]
This study uses a machine learning approach that was previously developed to produce local maps of forest parameters.
We used the GEDI Lidar mission as reference height data, and the satellite images from Sentinel-1, Sentinel-2 and ALOS-2 PALSA-2 to estimate forest height.
The height map is then derived into volume and aboveground biomass (AGB) using allometric equations.
arXiv Detail & Related papers (2023-10-23T07:58:49Z) - Vision Transformers, a new approach for high-resolution and large-scale
mapping of canopy heights [50.52704854147297]
We present a new vision transformer (ViT) model optimized with a classification (discrete) and a continuous loss function.
This model achieves better accuracy than previously used convolutional based approaches (ConvNets) optimized with only a continuous loss function.
arXiv Detail & Related papers (2023-04-22T22:39:03Z) - Very high resolution canopy height maps from RGB imagery using
self-supervised vision transformer and convolutional decoder trained on
Aerial Lidar [14.07306593230776]
This paper presents the first high-resolution canopy height map concurrently produced for multiple sub-national jurisdictions.
The maps are generated by the extraction of features from a self-supervised model trained on Maxar imagery from 2017 to 2020.
We also introduce a post-processing step using a convolutional network trained on GEDI observations.
arXiv Detail & Related papers (2023-04-14T15:52:57Z) - Neuroevolution-based Classifiers for Deforestation Detection in Tropical
Forests [62.997667081978825]
Millions of hectares of tropical forests are lost every year due to deforestation or degradation.
Monitoring and deforestation detection programs are in use, in addition to public policies for the prevention and punishment of criminals.
This paper proposes the use of pattern classifiers based on neuroevolution technique (NEAT) in tropical forest deforestation detection tasks.
arXiv Detail & Related papers (2022-08-23T16:04:12Z) - A high-resolution canopy height model of the Earth [22.603549892832753]
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.
arXiv Detail & Related papers (2022-04-13T10:34:32Z) - Country-wide Retrieval of Forest Structure From Optical and SAR
Satellite Imagery With Bayesian Deep Learning [74.94436509364554]
We propose a Bayesian deep learning approach to densely estimate forest structure variables at country-scale with 10-meter resolution.
Our method jointly transforms Sentinel-2 optical images and Sentinel-1 synthetic aperture radar images into maps of five different forest structure variables.
We train and test our model on reference data from 41 airborne laser scanning missions across Norway.
arXiv Detail & Related papers (2021-11-25T16:21:28Z) - Tackling the Overestimation of Forest Carbon with Deep Learning and
Aerial Imagery [13.97765383479824]
This proposal paper describes the first systematic comparison of forest carbon estimation from aerial imagery, satellite imagery, and ground-truth field measurements.
Aerial imagery is significantly more expensive to collect and it is unclear by how much the higher resolution improves the forest carbon estimation.
Our initial results show that forest carbon estimates from satellite imagery can overestimate above-ground biomass by more than 10-times for tropical reforestation projects.
arXiv Detail & Related papers (2021-07-23T15:59:52Z) - Counting Cows: Tracking Illegal Cattle Ranching From High-Resolution
Satellite Imagery [59.32805936205217]
Cattle farming is responsible for 8.8% of greenhouse gas emissions worldwide.
We obtained satellite imagery of the Amazon at 40cm resolution, and compiled a dataset of 903 images containing a total of 28498 cattle.
Our experiments show promising results and highlight important directions for the next steps on both counting algorithms and the data collection process for solving such challenges.
arXiv Detail & Related papers (2020-11-14T19:07:39Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.