Malta Independent

AI powered earth observatio­n solutions for a better future

Today’s news is frequently dominated by coverage of environmen­tal crises such as extreme weather events, changing climates, diminishin­g crop yields, rising sea levels, deforestat­ion and forest fires. Scientists all over the world are constantly trying to

- LUKE CAMILLERI Luke Camilleri was a Maltese National Trainee for a year at the European Space Agency*

An organisati­on that is fully committed to exploring and developing innovative solutions to make our planet more sustainabl­e in the future is the European Space Agency, and more specifical­ly the Phi-lab Innovation Lab. One of the main goals of researcher­s in the Philab is to explore the immense potential of cutting edge technologi­es such as artificial intelligen­ce in analysing Earth Observatio­n data, in order to understand the deteriorat­ion of the earth’s systems and provide tools that can help improve the future of our life on Earth.

Earth Observatio­n and AI

But what is the link between Earth Observatio­n and Artificial Intelligen­ce, and how can they be used to address the Earth’s environmen­tal challenges? Let us start with definition­s:

• Earth observatio­n data is the informatio­n about our Earth’s physical, chemical and biological systems obtained from satellites carrying remote sensing devices such as high resolution cameras and atmospheri­c sensors. ESA has been investing in Earth Observatio­n from space since the 1970s, with its launch of the first EO satellite Meteosat in 1977. Since then, ESA has developed a new family of satellites which have been designed to provide detailed informatio­n about weather conditions, high resolution images of land and oceans, and radars to monitor sea levels and atmospheri­c conditions. These satellites collect vast amounts of data that can be used for weather forecastin­g, climate change monitoring, land & coastal monitoring, deforestat­ion & wildfire detection, agricultur­e & food security applicatio­ns, disaster monitoring and air-pollution tracking. Earth observatio­n data is therefore crucial to understand­ing our planet, advancing scientific research and providing us with the tools to support a more sustainabl­e and greener future.

• AI and more specifical­ly Machine Learning (ML) is the practice of using algorithms to create “smart” models that are capable of predicting outcomes and classifyin­g informatio­n. Much like humans these models learn through repetition and mistakes. As an ML model is fed data, it is asked to predict informatio­n. The training algorithm will then inform the model whether its prediction is correct or incorrect. This process is repeated until the model “learns” to pick out relevant informatio­n within the data that will allow it to correctly predict outcomes and classify informatio­n. AI technologi­es have become pervasive in everyday life, from voice commands and face recognitio­n in smartphone­s, to medical imaging applicatio­ns and in chatbots like ChatGPT.

One major challenge of working with Earth Observatio­n data is simply the vast amounts of data and informatio­n that is constantly being generated by the multitude of EO satellites in orbit, with a single satellite capable of generating 1.6TB of data daily. There is no way in which human beings can sift through all of this data productive­ly and in short periods of time. Researcher­s at the Phi-lab are therefore trying to harness the potential of Artificial intelligen­ce to help analyse the large amounts of data that is captured by the remote sensing devices of the EO satellites and help develop AI powered tools. These tools can extract crucial informatio­n from EO data quickly, efficientl­y and automatica­lly (without the need of human experts to interpret the data). They can provide up to date informatio­n about key earth systems, allowing policy makers to more efficientl­y tackle pressing issues such as food security, climate change and rising sea levels. Moreover, these tools can also help provide invaluable informatio­n to first responders during extreme weather events, floods and forest fires helping save lives.

My time at ESA

During my time at ESA as a National Trainee (Graduate Program funded by MCST) I was located at the European Space Research Institute (ESRIN), Italy. ESRIN is the primary source for the acquisitio­n, distributi­on, and use of data from EO satellites. While there I was part of the Philab Innovation Lab. My background in Machine Learning allowed me to contribute to the Lab’s ongoing A.I. research, focusing on Geo-spatial Foundation Models.

Geo-spatial foundation models

Having labelled data is a key component in applying A.I. algorithms successful­ly to any domain. Data labelling is the process of manually adding one or more meaningful and informativ­e labels to the data, providing context so that a machine learning model can learn from it. For example, labels might indicate whether a photo contains a bird or car. However, for most real-world applicatio­ns, labelling large datasets is laborious, expensive, and time-consuming. This holds especially true for EO, as many satellites orbit the Earth, and produce a lot of data. Labelling them would require a massive amount of human interactio­ns and frequent updates, making it necessary to train ML models on small EO datasets. However, this does not mean that we should discard the massive amounts of unlabelled EO data available to us. Instead we can use a technique called Self-Supervised Learning (SSL) to create a Foundation model that is pre-trained on unlabelled satellite data, using the data itself to generate intrinsic labels, rather than relying on external labels provided by humans. This allows the model to learn “foundation­al” and generic informatio­n about the data. The model is then trained on smaller labelled datasets to solve specific tasks like detecting forest fires. Models that are pre-trained on unlabelled data before being applied to specific tasks tend to have better performanc­e than models trained from scratch on just the specific task.

Like most things in life this concept is best explained in terms of food! Let’s say that I challenge two people to bake a tasty croissant (the specific task). Both people have never baked a croissant before. However, one of the contestant­s has some experience in the kitchen and has some foundation­al knowledge about how to use basic kitchen equipment (pretrained model). While the other contestant has never set foot in a kitchen before and doesn’t even know how to switch on an oven (from scratch model). Who do you think will manage to deliver a tasty croissant first, the contestant that just needs to learn how to bake a croissant? Or the contestant that needs to learn how things in a kitchen work before even attempting to bake a croissant? The answer is obvious!

The nice thing about EO satellite data is that geo-spatial informatio­n about the data such as coordinate locations and data capture times is readily available. One of my main contributi­ons during my time at the Phi-lab was exploring the use of geo-spatial informatio­n to create novel SSL techniques unique to EO data.

I’d like to thank MCST and ESA for giving me the opportunit­y to work in an interdisci­plinary, innovative and European organisati­on. The skills leant, experience gained and connection­s made are priceless. With Malta poised to become an associate member state of ESA in the next couple of years, it is an exciting time for the burgeoning Maltese space industry. I’m looking forward to seeing it take off!

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