Climate change is our generation’s biggest challenge that every organization is trying to tackle. And earth observation (EO) is a crucial technology that will help these organizations to adapt and thrive in these uncertain times. But today developing EO systems from scratch is time consuming, expensive and requires very specific skills.
This is where SpaceSense comes in. SpaceSense is a NewSpace company helping organizations build geospatial AI solutions simpler. We provide numerous EO-based services and insights for the Agricultural and Environmental industries.
We are facing two major issues:
-The climate variability between our different customers, and our need to adapt our solutions for each. For example wheat will not grow the same in Tunisia as in Russia. So our models need to account for it.
-Most of our AI models are sensor dependant. A sensor is linked to a specific satellite or constellation of satellites. This is because different sensors have slightly shifted spectral detection ranges, resulting in images that are spectrally shifted. This means that the observations are not interchangeable between similar sensors. This is a major issue because it makes it significantly more expensive to develop solutions for these satellites.
This EU projects aims to solve both these issues, through the development of:
- A template for creating a deep learning segmentation solution for crop type detection using sentinel-2. This template will be able to enable the user to create a new custom crop type detection model with local data in a fully automated fashion. This will also include various aspects of feature engineering, data filtering and processing, pre-trained model and post processing, all coming from internal R&D of SpaceSense, reducing the time-to-market from months to weeks.
-An algorithm and a pipeline that would be able to take two different types of images (A and B), and by using an unpaired Image to Image GAN model, translate image type A into a spectrum range more similar to image type B. This means that every model we create in the future will be able to be done only for one image type, and that'll be able to use this algorithm to apply the model to other sources of imagery, without any need for retraining.