IEEE_CC-BY-08125589.pdf (1.75 MB)
Download filePersonalized driver workload inference by learning from vehicle related measurements
journal contribution
posted on 2017-10-27, 08:42 authored by Dewei Yi, Jinya Su, Cunjia LiuCunjia Liu, Wen-Hua ChenWen-Hua ChenAdapting in-vehicle systems (e.g. Advanced Driver Assistance Systems, In-Vehicle Information Systems) to individual drivers’ workload can enhance safety and convenience. To make this possible, it is a prerequisite to infer driver workload so that adaptive aiding can be provided to the driver at the right time and in a proper manner. Rather than developing an average model for all drivers, a Personalized Driver Workload Inference (PDWI)
system considering individual drivers’ driving characteristics is developed using machine learning techniques via easily accessed
Vehicle Related Measurements (VRMs). The proposed PDWI system comprises two stages. In offline training, individual drivers’ workload is first automatically splitted into different categories according to its inherent data characteristics using Fuzzy C means clustering. Then an implicit mapping between VRMs
and different levels of workload is constructed via classification algorithms. In online implementation, VRMs samples are classified
into different clusters, consequently driver workload can be successfully inferred. A recently collected dataset from real-world
naturalistic driving experiments is drawn to validate the proposed PDWI system. Comparative experimental results indicate that the proposed framework integrating Fuzzy C-means clustering and Support Vector Machine classifier provides a promising workload recognition performance in terms of accuracy, precision, recall, F1-score and prediction time. The inter-individual differences in term of workload are also identified and can be accommodated by the proposed framework due to its adaptiveness.
Funding
This work was supported by the U.K. Engineering and Physical Sciences Research Council Autonomous and Intelligent Systems Programme with BAE Systems as the leading industrial partner under Grant EP/J011525/1. The work of D. Yi was supported by the Chinese Scholarship Council.
History
School
- Aeronautical, Automotive, Chemical and Materials Engineering
Department
- Aeronautical and Automotive Engineering