Gaia AI
We are committed to solving the issues of trust in the forest carbon offset market, which is largely driven by a lack of high resolution data that would give an accurate measurement of carbon stocks in a forest.
Our solution is to equip drones with cameras and LiDAR sensors - the same sensors used in autonomous vehicles - and to fly these drones around a forest to gather rich, high resolution data on the forest. We would then apply similar algorithms to what we have worked with in the autonomous vehicles’ space, to automatically process this high resolution data into the forest metrics and carbon stock estimates that stakeholders need to have high confidence on carbon credits.
If scaled globally, our solution would help fight against climate change by enabling more forest carbon offset (conservation) projects, and it could also provide economic opportunities to rural areas around forest conservation projects.
Recent studies say that even in an optimistic climate scenario where we rapidly reduce our CO2 emissions by 2050, we will still need to capture CO2 at a rate more than 125x the 2016 levels to avoid a climate catastrophe. Nature-based CO2 removal - specifically, planting and growing trees - is a tried and true method of capturing carbon and can be used to generate carbon credits for land owners. However, the current approaches to verifying forest growth (to generate carbon credits) involve massive amounts of manual labor.
This practice is both expensive and slow. In addition to all this, there is a lack of available data for project developers to intelligently design and manage forests. Furthermore, the lack of high resolution data on forests has instilled a lack of trust in forest carbon offset projects, limiting the potential of forest conservation as a way to tackle climate change.
Gaia uses drones, computer vision and LiDAR to measure forests. We are equipping drones with cameras and LiDAR sensors - the same sensors used in autonomous vehicles - and flying these drones around a forest to gather rich, high resolution data on the forest. We will then apply the same algorithms used in the autonomous vehicles space to automatically process this data into actionable insights about the forest, such as number and species of trees, volume of trees, and ultimately a precise estimate of volume of carbon stock in a forest.
Landowners and project developers can then use these insights to better manage their forests, as well as help them to monetize conservation of their forests by participating in the natural carbon offset market (which is where corporations are now investing money to offset their own carbon emissions).
If we succeed, we will help conserve forested land around the world, sequestering more carbon from the atmosphere and therefore helping to fight climate change. Climate change is an issue that affects the entire planet, so our solution will impact the broader population.
More tangibly, our solution will also support foresters in their work, helping them to work more efficiently while also giving them the tools to measure forests more accurately. Also, in many situations - especially for some of the more remote forest carbon offset projects - foresters have to traverse more treacherous environments to manually measure plots of land. By creating a drone data acquisition system, we will help foresters accomplish their jobs more safely.
Finally, by measuring the health of forests, we will enable better management of forest ecosystems, which will improve the lives of communities who live around these forests. These communities tend to be more rural, and much of their livelihood depends on the local environment. Improved forest management can also lead to better food and water supply for these communities, not to mention the jobs that may come from managing and conserving more forested land.
- Provide scalable and verifiable monitoring and data collection to track ecosystem conditions, such as biodiversity, carbon stocks, or productivity.
First, we are addressing the problem of efficient, accurate data collection in forests to measure biodiversity and carbon content. Our solution uses sensors and AI similar to autonomous vehicles to collect and process forest data into meaningful metrics.
Furthermore, we use machine learning to classify trees and extract insights about forest layouts, including how resiliency, biodiversity, and carbon density can vary with different layouts.
Lastly, forest conservation projects (especially for carbon offsets) are hindered by the efficiency, cost, and accuracy of tracking progress; our solution addresses these issues, thus catalyzing more conservation projects, leading to greater carbon sequestration in forests.
- Prototype: A venture or organization building and testing its product, service, or business model.
We have developed our v0 product for below canopy data collection (LiDAR+camera), and have collected our first datasets. We have begun developing our solution for above canopy data collection (drone + LiDAR), evaluating different sensor hardware for the v1 product, using an AWS backend for our data, and will develop our front end and AI algorithms over the next 3 months. We also have an LOI from Pachama, a Series A startup in the forestry space, so this development is geared towards meeting Pachama’s needs for higher resolution data.