image: A Jurassic-aged dinosaur footprint from the Isle of Skye, Scotland, displayed in 5 mm contours from a photogrammetric model. Credit Tone Blakesley.
Credit: Tone Blakesley.
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AI sheds light on mysterious dinosaur footprints
A new app, powered by artificial intelligence (AI), could help scientists and the public identify dinosaur footprints made millions of years ago, a study reveals.
For decades, paleontologists have pondered over a number of ancient dinosaur tracks and asked themselves if they were left by fierce carnivores, gentle plant-eaters or even early species of birds?
Now, researchers and dinosaur enthusiasts alike can upload an image or sketch of a dinosaur footprint from their mobile phone to the DinoTracker app and receive an instant analysis.
Fosilised dinosaur footprints are an important indicator of pre-historic life but previous research has shown that they are notoriously difficult to interpret.
Traditional methods required researchers to manually compile computer datasets in which specific tracks were assigned to specific dinosaurs, which could introduce bias, experts say.
Researchers led by the Helmholtz-Zentrum research centre in Berlin, in partnership with the University of Edinburgh used advanced algorithms to enable computers to train themselves to recognise variations in the shape of dinosaur footprints.
Their AI model schooled itself on nearly 2,000 fossil footprints, plus millions of additional variations to mimic realistic changes, such as compression and edge displacement.
It identified eight key features of footprint variation including the spread of the toes, the position of the heel, the size of contact area the foot made while striking the ground and the amount of weight placed on different parts of the foot.
With the variations recognized, the model was then able to predict which dinosaur made the tracks based on comparisons to existing fossil footprints.
The algorithm achieved around 90 percent agreement with the classifications made by human experts, even for contentious species.
Most intriguingly, the network found that several dinosaur tracks, made more than 200 million years ago, share uncanny features with extinct and modern birds.
This suggests that birds could have originated tens of millions of years earlier than previously thought, or alternatively, that some primitive dinosaurs actually had feet that coincidentally resembled those of birds to a high degree, the team says.
The system also indicated that some long-mysterious footprints from the Isle of Skye in Scotland, which were impressed on the muddy shore of a lagoon around 170 million years ago, might have been made by some of the oldest relatives of duck-billed dinosaurs known from anywhere in the world.
The research opens up fresh possibilities for understanding how dinosaurs lived and moved across the earth and gives everyone the opportunity to become their own fossil footprint investigator.
The study, published in PNAS, was funded by the innovations pool of the BMBF-Project: Data-X, the Helmholtz project ROCK-IT, the Helmholtz-AI project NorMImag the National Geographic Society and the Leverhulme Trust.
Dr Gregor Hartmann of Helmholtz-Zentrum research centre, said: “Our method provides an unbiased way to recognize variation in footprints and test hypotheses about their makers. It’s an excellent tool for research, education, and even fieldwork.”
Professor Steve Brusatte, Personal Chair of Palaeontology and Evolution, School of GeoSciences, said: “This study is an exciting contribution for paleontology and an objective, data-driven way to classify dinosaur footprints – something that has stumped experts for over a century.
“It opens up exciting new possibilities for understanding how these incredible animals lived and moved, and when major groups like birds first evolved. This computer network might have identified the world’s oldest birds, which I think is a fantastic and fruitful use for AI.”
For further information and press enquiries, please contact: Rhona Crawford, Press and PR Office, University of Edinburgh, email: rhona.crawford@ed.ac.uk
Journal
Proceedings of the National Academy of Sciences
Method of Research
Computational simulation/modeling
Subject of Research
Animals
Article Publication Date
26-Jan-2026