AUTONEWS
When autonomous mobility learns to wonder
Autonomous mobility already exists, to some extent. Building an autonomous vehicle that can safely navigate an empty highway is one thing. The real challenge lies in adapting to the dynamic and messy reality of urban environments.
Unlike the grid-like streets of many American cities, European roads are often narrow, winding and irregular. Urban environments have countless intersections without clear markings, pedestrian-only zones, roundabouts and areas where bicycles and scooters share the road with cars. Designing an autonomous mobility system that can safely operate in these conditions requires more than just sophisticated sensors and cameras.
It's mostly about tackling a tremendous challenge: predicting the dynamics of the world, in other words, understanding how humans navigate within given urban environments. Pedestrians, for example, often make spontaneous decisions such as darting across a street, suddenly changing direction, or weaving through crowds. A kid might run after a dog. Cyclists and scooters further complicate the equation, with their agile and often unpredictable maneuvers.
"Autonomous mobility, whether in the form of self-driving cars or delivery robots, must evolve beyond merely reacting to the present moment. To navigate our complex, dynamic world, these AI-driven systems need the ability to imagine, anticipate, and simulate possible futures—just as humans do when we wonder what might happen next. In essence, AI must learn to wonder," says Alexandre Alahi, head of EPFL's Visual Intelligence for Transportation Laboratory (VITA).
Credit: VITA Lab, EPFL
Pushing the boundaries of prediction: GEM...At VITA laboratory, the goal of making AI "wonder" is becoming a reality. This year, the team has had seven papers accepted to the Conference on Computer Vision and Pattern Recognition (CVPR'25) to be held in Nashville, June 11–15. Each contribution introduces a novel method to help AI systems imagine, predict, and simulate possible futures—from forecasting human motion to generating entire video sequences.
In the spirit of open science, all models and datasets are being released as open source, empowering the global research community and industry to build upon and extend this work. Together, these contributions represent a unified effort to give autonomous mobility the ability not just to react, but to truly anticipate the world around them.
One of the most innovative models is designed to predict video sequences from a single image captured by a camera mounted on a vehicle (or any egocentric view). Called GEM (Generalizable Ego-Vision Multimodal World Model), it helps autonomous systems anticipate future events by learning how scenes evolve over time.
As part of the Swiss AI Initiative, and in collaboration with four other institutions (University of Bern, SDSC, University of Zurich and ETH Zurich), they trained their model using 4,000 hours of videos spanning autonomous driving, egocentric human activities (meaning, activities from the first person point of view) and drone footage.
GEM learns how people and objects move in different environments. It uses this knowledge to generate entirely new video sequences that imagine what might happen next in a given scene, whether it's a pedestrian crossing the street or a car turning at an intersection.
These imagined scenarios can even be controlled by adding cars and pedestrians, making GEM a powerful tool for safely training and testing autonomous systems in a wide range of realistic situations.
To make these predictions, the model looks simultaneously at several types of information, also called modalities. It analyzes RGB images—which are standard color video frames—to understand the visual context of a scene, and depth maps to grasp its 3D structure. These two data types together allow the model to interpret both what is happening and where things are in space.
GEM also takes into account the movement of the camera (ego-motion), human poses, and object dynamics over time. By learning how all of these signals evolve together across thousands of real-world situations, it can generate coherent, realistic sequences that reflect how a scene might change in the next few seconds.
"The tool can function as a realistic simulator for vehicles, drones and other robots, enabling the safe testing of control policies in virtual environments before deploying them in real-world conditions. It can also assist in planning by helping these robots anticipate changes in their surroundings, making decision-making more robust and context-aware," says Mariam Hassan, Ph.D student at VITA lab.


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