SYCVDec 24, 2022

Risk assessment and mitigation of e-scooter crashes with naturalistic driving data

arXiv:2212.12660v23 citationsh-index: 21
Originality Synthesis-oriented
AI Analysis

It addresses safety risks for e-scooter riders and drivers by providing data-driven insights, but is incremental as it builds on existing crash research methods.

This paper tackles the problem of e-scooter-involved crashes by quantitatively measuring e-scooter rider behaviors using naturalistic driving data, analyzing 500 vehicle-to-e-scooter interactions to facilitate crash scenario modeling and mitigation algorithm development.

Recently, e-scooter-involved crashes have increased significantly but little information is available about the behaviors of on-road e-scooter riders. Most existing e-scooter crash research was based on retrospectively descriptive media reports, emergency room patient records, and crash reports. This paper presents a naturalistic driving study with a focus on e-scooter and vehicle encounters. The goal is to quantitatively measure the behaviors of e-scooter riders in different encounters to help facilitate crash scenario modeling, baseline behavior modeling, and the potential future development of in-vehicle mitigation algorithms. The data was collected using an instrumented vehicle and an e-scooter rider wearable system, respectively. A three-step data analysis process is developed. First, semi-automatic data labeling extracts e-scooter rider images and non-rider human images in similar environments to train an e-scooter-rider classifier. Then, a multi-step scene reconstruction pipeline generates vehicle and e-scooter trajectories in all encounters. The final step is to model e-scooter rider behaviors and e-scooter-vehicle encounter scenarios. A total of 500 vehicle to e-scooter interactions are analyzed. The variables pertaining to the same are also discussed in this paper.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes