Tackling the Overestimation of Forest Carbon with Deep Learning and
Aerial Imagery
- URL: http://arxiv.org/abs/2107.11320v1
- Date: Fri, 23 Jul 2021 15:59:52 GMT
- Title: Tackling the Overestimation of Forest Carbon with Deep Learning and
Aerial Imagery
- Authors: Gyri Reiersen, David Dao, Bj\"orn L\"utjens, Konstantin Klemmer,
Xiaoxiang Zhu, and Ce Zhang
- Abstract summary: 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.
- Score: 13.97765383479824
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Forest carbon offsets are increasingly popular and can play a significant
role in financing climate mitigation, forest conservation, and reforestation.
Measuring how much carbon is stored in forests is, however, still largely done
via expensive, time-consuming, and sometimes unaccountable field measurements.
To overcome these limitations, many verification bodies are leveraging machine
learning (ML) algorithms to estimate forest carbon from satellite or aerial
imagery. Aerial imagery allows for tree species or family classification, which
improves the satellite imagery-based forest type classification. However,
aerial imagery is significantly more expensive to collect and it is unclear by
how much the higher resolution improves the forest carbon estimation. This
proposal paper describes the first systematic comparison of forest carbon
estimation from aerial imagery, satellite imagery, and ground-truth field
measurements via deep learning-based algorithms for a tropical reforestation
project. 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. The significant difference between aerial and
satellite-derived forest carbon measurements shows the potential for aerial
imagery-based ML algorithms and raises the importance to extend this study to a
global benchmark between options for carbon measurements.
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