Skip to main content

Nervous about AV travel? You’ll get the Gist

Help is on the way for those anxious folk who will accept rides from automated vehicles but may feel uncomfortable doing so, reports David Arminas
February 4, 2025 Read time: 3 mins
Oh, just sit back and relax (© Belena839 | Dreamstime.com)

Scientists from South Korea’s Gwangju Institute of Science and Technology (Gist) say they have created strategies to make passengers feel safer in self-driven vehicles.

Automated vehicles (AVs) may be part of the future urban mobility mix, but passenger trust remains a challenge. Providing timely, passenger-specific explanations for the decisions AVs make can bridge this gap - so Gist’s researchers have investigated a method of increasing passengers’ sense of safety and confidence in AV trips.

Their TimelyTale is a novel dataset designed to capture real-world driving scenarios and passenger explanation needs. The goal, they say, is to have the in-vehicle multimodal dataset in all AVs.

 

Fostering trust

Driverless cars enable human users to engage in non-driving related tasks such as relaxing, working or watching multimedia en route. However, widespread adoption is hindered by passengers' limited trust. Understanding why AVs react a certain way can foster trust by providing control and reducing negative experiences. However, explanations must be informative, understandable and concise to be effective.

Existing explainable artificial intelligence (XAI) approaches majorly cater to developers, focusing on high-risk scenarios or complex explanations, which are both potentially unsuitable for passengers. Instead, passenger-centric XAI models need to understand the type and timing of information needed in real-world driving scenarios, said Professor SeungJun Kim, director of the Human-Centered Intelligent Systems Lab at Gist.

 

"Our research lays the groundwork for increased acceptance and adoption of AVs” SeungJun Kim, Gwangju Institute of Science and Technology

 

TimelyTale was created to include passenger-specific sensor data for context-relevant explanations which make people feel more confident about their trip. “Our research shifts the focus of XAI in autonomous driving from developers to passengers,” said Kim. “We have developed an approach for gathering passenger's actual demand for in-vehicle explanations and methods to generate timely, situation-relevant explanations for passengers.”

The researchers first studied the impact of various visual explanation types, including perception, attention and a combination of both - and their timing - on passenger experience under real driving conditions by using augmented reality.

They found that the vehicle’s perception state alone improved trust, perceived safety, and situational awareness without overwhelming the passengers. They also discovered that traffic risk probability was most effective for deciding when to deliver explanations, especially when passengers felt overloaded with information.

 

Telling a TimelyTale

Building upon these findings, the researchers developed the TimelyTale dataset. This approach includes various types of data: exteroceptive (regarding the external environment, such as sights and sounds); proprioceptive (about the body’ positions and movements) and interoceptive (about the body’s sensations such as pain).

The data was gathered from passengers using a variety of sensors in naturalistic driving scenarios, as key features for predicting their explanation demands. Notably, this work also incorporates the concept of interruptibility, which refers to the shift in passenger focus from so-called ‘non-driving-related’ tasks to ‘driving-related’ information. The method effectively identified both the timing and frequency of the passenger’s demands for explanations as well as specific explanations that passengers want during driving situations.

Using this approach, the researchers developed a machine-learning model that predicts the best time for providing this information. Additionally, as proof of concept, the researchers conducted city-wide modelling for generating textual explanations based on different driving locations.

"Our research lays the groundwork for increased acceptance and adoption of AVs, potentially reshaping urban transportation and personal mobility in the coming years," concludes Kim.

Related Content

  • Data goldmines offer rich pickings
    May 31, 2013
    Astronomical is not too grand a term to describe the current rate of growth in transportation-related data. Massive amounts of traffic related information, such as speed, volume, incidents and weather are being generated every second by road operators and users alike. Big data’ derives its name from the sheer amount and complexity of available raw data. Its potential value is starting to emerge among the intelligent transportation systems community. A gold rush is taking place to capture this value, with da
  • Authorities look to MaaS for new solutions and cost savings
    July 18, 2017
    The structure of society and the way in which our cities work will be completely transformed by Mobility as a Service (MaaS), Finland’s minister of transport and communications Anne Berner, told ITS International’s recent MaaS Market conference 2017 in London. In her keynote address, Berner told a packed audience of more than 200 ITS professionals that MaaS has the potential to help governments around the world meet their big city targets such as the rate of employment, the environment, the efficient use of
  • Supply chain issues: AGD looks ahead
    June 2, 2022
    There are multiple causes for current global supply chain issues – and this isn’t likely to improve in the near future. Ian Hind of ITS manufacturer AGD Systems spells out how to mitigate the impact
  • NOCoE delivers data for diligent DOTs
    April 29, 2015
    David Crawford talks to Dennis Motiani about the role of the new National Operations Centre of Excellence. Consolidating the collective experience of the US transportation system’s management and operations (TSM&O) community, streamlining its information gathering, while cutting research times and costs are the key drivers behind the country’s new National Operations Centre of Excellence (NOCoE). Launched in January at the annual meeting of the Transportation Research Board (TRB), this sets out to be a sin