ΑΙhub.org
 

Deep learning-powered system maps corals in 3D


by
11 April 2024



share this:

By Cécilia Carron

Corals often provide a colorful backdrop to photographs of shimmering fish captured by amateur divers. But they’re also the primary focus of many scientists, on account of their ecological importance. Corals – marine invertebrates with calcium-carbonate exoskeletons – are some of the most diverse ecosystems on Earth: despite covering less than 0.1% of the ocean’s surface, they provide shelter and habitats for almost one-third of known marine species. Their impact also extends to human populations in many countries around the world. According to research by the U.S. National Oceanic and Atmospheric Administration, up to half a billion people worldwide rely on coral reefs for food security and tourist income. But the world’s corals are under threat from rising sea temperatures and local anthropogenic pollution, which causes them to bleach and die. In response, organizations like TRSC are carrying out in-depth studies in an effort to unlock the secrets of coral species found in the Red Sea, which are uniquely resistant to climate-related stress. This EPFL-led initiative served as a testing ground for DeepReefMap, an AI system developed at the Environmental Computational Science and Earth Observation Laboratory (ECEO) within EPFL’s School of Architecture, Civil and Environmental Engineering (ENAC). The system can produce several hundred meters of 3D maps of coral reefs in just a few minutes from underwater images taken by commercially available cameras. It can also classify corals by recognizing certain features and characteristics.

“With this new system, anyone can play a part in mapping the world’s coral reefs,” says TRSC projects coordinator Samuel Gardaz. “It will really spur on research in this field by reducing the workload, the amount of equipment and logistics, and the IT-related costs.” The research is detailed in a paper published in Methods in Ecology and Evolution.

Local divers can easily capture data as they swim

Obtaining a 3D coral reef map using conventional methods is not easy: costly, computationally-intensive reconstructions are based on several hundred images of the same portion of reef of very limited size (just a few dozen meters), taken from many different reference points, and require the work of a specialist to obtain. These factors severely limit the application of these methods in countries lacking the necessary technical expertise, and prevent the monitoring of large portions of reef (hundreds of meters, even kilometers).

But the AI-powered system developed at EPFL means data can now be collected by amateur divers: equipped with standard diving gear and a commercially available camera, they can swim slowly above a reef for several hundred meters, taking footage as they go. The only limits are the camera’s battery life and the amount of air in the diver’s tank. In order to capture images over a wider area, the EPFL researchers developed a PVC structure that holds six cameras – three facing forward and three facing backward, located one meter apart – that can be operated by a single person. The apparatus offers a low-cost option for local diving teams, which often operate on limited budgets.

Once the footage has been uploaded, DeepReefMap gets to work. This system has no problem with the poor lighting, diffraction and caustic effects typical of underwater images, since deep neural networks learn to adapt to these conditions, which are suboptimal for computer vision algorithms. In addition, existing 3D mapping programs have several drawbacks. They work reliably only under precise lighting conditions and with high-resolution images. “They’re also limited when it comes to scale: at a resolution where individual corals can be identified, the biggest 3D maps are several meters in length, which requires an enormous amount of processing time,” explains Devis Tuia, a professor at ECEO. “With DeepReefMap, we’re restricted only by how long the diver can stay underwater.”

Categorizing corals by health and shape

The researchers also made life easier for field biologists by including semantic segmentation algorithms that can classify and quantify corals according to two characteristics: health – from highly colorful (suggesting good health) to white (indicative of bleaching) and covered in algae (denoting death) – and shape, using an internationally recognized scale to classify the types of corals most commonly found in the shallow reefs of the Red Sea (branching, boulder, plate and soft). “Our aim was to develop a system that would prove useful to scientists working in the field and that could be rolled out quickly and widely,” says Jonathan Sauder, who worked on the development of DeepReefMap for his PhD thesis. “Djibouti, for instance, has 400 km of coastline. Our method doesn’t require any expensive hardware. All it takes is a computer with a basic graphics processing unit. The semantic segmentation and 3D reconstruction happen at the same speed as the video playback.”

Towards a digital twin of the reef

“The system is so easy to implement that we’ll be able to monitor how reefs change over time to identify priority conservation areas,” says Guilhem Banc-Prandi, a postdoc at EPFL’s Laboratory for Biological Geochemistry (LGB). “Having hard data on the abundance and health of corals is key to understanding temporal dynamics.”

The new 3D mapping technology will give scientists a starting point for adding other data such as diversity and richness of reef species, population genetics, adaptive potential of corals to warmer waters, local pollution in reefs, in a process that could eventually lead to the creation of a fully fledged digital twin. DeepReefMap could equally be used in mangroves and other shallow-water habitats, and serve as a guide in the exploration of deeper marine ecosystems. “The reconstruction capability built into our AI system could easily be employed in other settings, although it’ll take time to train the neural networks to classify species in new environments,” says Tuia.

Read the work in full

Scalable Semantic 3D Mapping of Coral Reefs with Deep Learning, Jonathan Sauder, Guilhem Banc-Prandi, Anders Meibom, Devis Tuia. Methods in Ecology and Evolution (2024).




EPFL




            AIhub is supported by:



Related posts :



Deploying agentic AI: what worked, what broke, and what we learned

  15 Sep 2025
AI scientist and researcher Francis Osei investigates what happens when Agentic AI systems are used in real projects, where trust and reproducibility are not optional.

Memory traces in reinforcement learning

  12 Sep 2025
Onno writes about work presented at ICML 2025, introducing an alternative memory framework.

Apertus: a fully open, transparent, multilingual language model

  11 Sep 2025
EPFL, ETH Zurich and the Swiss National Supercomputing Centre (CSCS) released Apertus today, Switzerland’s first large-scale, open, multilingual language model.

Interview with Yezi Liu: Trustworthy and efficient machine learning

  10 Sep 2025
Read the latest interview in our series featuring the AAAI/SIGAI Doctoral Consortium participants.

Advanced AI models are not always better than simple ones

  09 Sep 2025
Researchers have developed Systema, a new tool to evaluate how well AI models work when predicting the effects of genetic perturbations.

The Machine Ethics podcast: Autonomy AI with Adir Ben-Yehuda

This episode Adir and Ben chat about AI automation for frontend web development, where human-machine interface could be going, allowing an LLM to optimism itself, job displacement, vibe coding and more.

Using generative AI, researchers design compounds that can kill drug-resistant bacteria

  05 Sep 2025
The team used two different AI approaches to design novel antibiotics, including one that showed promise against MRSA.

#IJCAI2025 distinguished paper: Combining MORL with restraining bolts to learn normative behaviour

and   04 Sep 2025
The authors introduce a framework for guiding reinforcement learning agents to comply with social, legal, and ethical norms.



 

AIhub is supported by:






 












©2025.05 - Association for the Understanding of Artificial Intelligence