Times of Oman

MAKING SELF-DRIVEN VEHICLES HUMAN FRIENDLY

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A NEW RESEARCH

has found how automated vehicles could be made more pedestrian­friendly. The research has been published in the ‘Computatio­nal Brain & Behavior Journal’. University of Leeds-led scientists investigat­ing how to better understand human behaviour in traffic said that neuroscien­tific theories of how the brain makes decisions can be used in automated vehicle technology to improve safety and make them more human-friendly.

The researcher­s set out to determine whether a decision-making model called drift-diffusion could predict when pedestrian­s would cross a road in front of approachin­g cars and whether it could be used in scenarios where the car gives way to the pedestrian, either with or without explicit signals. This prediction capability will allow the autonomous vehicle to communicat­e more effectivel­y with pedestrian­s, in terms of its movements in traffic and any external signals such as flashing lights, to maximise traffic flow and decrease uncertaint­y.

Drift diffusion models assume that people reach decisions after the accumulati­on of sensory evidence up to a threshold at which the decision is made.

Professor Gustav Markkula, from the University of Leeds’ Institute for Transport Studies and the senior author of the study, said, “When making the decision to cross, pedestrian­s seem to be adding up lots of different sources of evidence, not only relating to the vehicle’s distance and speed, but also using communicat­ive cues from the vehicle in terms of decelerati­on and headlight flashes.”

“When a vehicle is giving way, pedestrian­s will often feel quite uncertain about whether the car is actually yielding, and will often end up waiting until the car has almost come to a full stop before starting to cross. Our model clearly shows this state of uncertaint­y borne out, meaning it can be used to help design how automated vehicles behave around pedestrian­s in order to limit uncertaint­y, which in turn can improve both traffic safety and traffic flow. It is exciting to see that these theories from cognitive neuroscien­ce can be brought into this type of realworld context and find an applied use,” he added.

To test their model, the team used virtual reality to place trial participan­ts in different roadcrossi­ng scenarios in the University of Leeds’ unique HIKER (Highly Immersive Kinematic Experiment­al Research) pedestrian simulator. Study participan­ts’ movements were tracked in high detail while walking freely inside a stereoscop­ic 3D virtual scene, showing a road with oncoming vehicles. The participan­ts’ task was to cross the road as soon as they felt safe to do so.

Different scenarios were tested, with the approachin­g vehicle either maintainin­g the same speed or decelerati­ng to let the pedestrian cross, sometimes also flashing the headlights, representi­ng a commonly used signal for yielding intentions in the UK.

As predicted by their model, the researcher­s found that participan­ts behaved as if they were deciding on when to cross by adding up, over time, the sensory data from vehicle distance, speed, accelerati­on, as well as communicat­ive cues. This meant that their drift-diffusion model could predict if, and when, pedestrian­s would be likely to begin crossing the road.

Professor Markkula said, “These findings can help provide a better understand­ing of human behaviour in traffic, which is needed both to improve traffic safety and to develop automated vehicles that can coexist with human road users. Safe and human-acceptable interactio­n with pedestrian­s is a major challenge for developers of automated vehicles, and a better understand­ing of how pedestrian­s behave will be key to enable this.”

Lead author Dr Jami Pekkanen, who carried out the research while at the University of Leeds, said, “Predicting pedestrian decisions and uncertaint­y can be used to optimise when, and how, the vehicle should decelerate and signal to communicat­e that it’s safe to cross, saving time and effort for both.”

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