Investigating Explanations in Conditional and Highly Automated Driving: The Effects of Situation Awareness and Modality

07/15/2022
by   Lilit Avetisyan, et al.
0

With the level of automation increases in vehicles, such as conditional and highly automated vehicles (AVs), drivers are becoming increasingly out of the control loop, especially in unexpected driving scenarios. Although it might be not necessary to require the drivers to intervene on most occasions, it is still important to improve drivers' situation awareness (SA) in unexpected driving scenarios to improve their trust in and acceptance of AVs. In this study, we conceptualized SA at the levels of perception (SA L1), comprehension (SA L2), and projection (SA L3), and proposed an SA level-based explanation framework based on explainable AI. Then, we examined the effects of these explanations and their modalities on drivers' situational trust, cognitive workload, as well as explanation satisfaction. A three (SA levels: SA L1, SA L2 and SA L3) by two (explanation modalities: visual, visual + audio) between-subjects experiment was conducted with 340 participants recruited from Amazon Mechanical Turk. The results indicated that by designing the explanations using the proposed SA-based framework, participants could redirect their attention to the important objects in the traffic and understand their meaning for the AV system. This improved their SA and filled the gap of understanding the correspondence of AV's behavior in the particular situations which also increased their situational trust in AV. The results showed that participants reported the highest trust with SA L2 explanations, although the mental workload was assessed higher in this level. The results also provided insights into the relationship between the amount of information in explanations and modalities, showing that participants were more satisfied with visual-only explanations in the SA L1 and SA L2 conditions and were more satisfied with visual and auditory explanations in the SA L3 condition.

READ FULL TEXT
research
05/21/2019

Look Who's Talking Now: Implications of AV's Explanations on Driver's Trust, AV Preference, Anxiety and Mental Workload

Explanations given by automation are often used to promote automation ad...
research
05/28/2023

Investigating HMIs to Foster Communications between Conventional Vehicles and Autonomous Vehicles in Intersections

In mixed traffic environments that involve conventional vehicles (CVs) a...
research
12/08/2021

An Investigation of Drivers' Dynamic Situational Trust in Conditionally Automated Driving

Understanding how trust is built over time is essential, as trust plays ...
research
06/21/2020

To Explain or Not to Explain: A Study on the Necessity of Explanations for Autonomous Vehicles

Explainable AI, in the context of autonomous systems, like self driving ...
research
10/18/2018

The Effects of Using Taxi-Hailing Application on Driving Performance

Driver distraction has become a major threat to the road safety, and the...
research
05/24/2022

Justifying Social-Choice Mechanism Outcome for Improving Participant Satisfaction

In many social-choice mechanisms the resulting choice is not the most pr...
research
06/14/2023

From Driver to Supervisor: Comparing Cognitive Load and EEG-based Attention Allocation across Automation Levels

With increasing automation, drivers' role progressively transitions from...

Please sign up or login with your details

Forgot password? Click here to reset