TimelyTale: A Multimodal Dataset Approach to Assessing Passengers' Explanation Demands in Highly Automated Vehicles

Author:

Kim Gwangbin1ORCID,Hwang Seokhyun1ORCID,Seong Minwoo1ORCID,Yeo Dohyeon1ORCID,Rus Daniela2ORCID,Kim SeungJun1ORCID

Affiliation:

1. Gwangju Institute of Science and Technology, Gwangju, Republic of Korea

2. Massachusetts Institute of Technology, Cambridge, United States

Abstract

Explanations in automated vehicles enhance passengers' understanding of vehicle decision-making, mitigating negative experiences by increasing their sense of control. These explanations help maintain situation awareness, even when passengers are not actively driving, and calibrate trust to match vehicle capabilities, enabling safe engagement in non-driving related tasks. While design studies emphasize timing as a crucial factor affecting trust, machine learning practices for explanation generation primarily focus on content rather than delivery timing. This discrepancy could lead to mistimed explanations, causing misunderstandings or unnecessary interruptions. This gap is partly due to alack of datasets capturing passengers' real-world demands and experiences with in-vehicle explanations. We introduce TimelyTale, an approach that records passengers' demands for explanations in automated vehicles. The dataset includes environmental, driving-related, and passenger-specific sensor data for context-aware explanations. Our machine learning analysis identifies proprioceptive and physiological data as key features for predicting passengers' explanation demands, suggesting their potential for generating timely, context-aware explanations. The TimelyTale dataset is available at https://doi.org/10.7910/DVN/CQ8UB0.

Funder

Institute for Information & communication Technology Planning & evaluation

Gwangju Institute of Science and Technology

National Research Foundation of Korea

Publisher

Association for Computing Machinery (ACM)

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