• Journal of Internet Computing and Services
    ISSN 2287 - 1136 (Online) / ISSN 1598 - 0170 (Print)
    https://jics.or.kr/

Personal Driving Style based ADAS Customization using Machine Learning for Public Driving Safety


Giyoung Hwang, Dongjun Jung, Yunyeong Goh, Jong-Moon Chung, Journal of Internet Computing and Services, Vol. 24, No. 1, pp. 39-47, Feb. 2023
10.7472/jksii.2023.24.1.39, Full Text:
Keywords: autonomous vehicles, ADAS, Machine Learning, SVM, LSTM, GRU, Public Driving Safety

Abstract

The development of autonomous driving and Advanced Driver Assistance System (ADAS) technology has grown rapidly in recent years. As most traffic accidents occur due to human error, self-driving vehicles can drastically reduce the number of accidents and crashes that occur on the roads today. Obviously, technical advancements in autonomous driving can lead to improved public driving safety. However, due to the current limitations in technology and lack of public trust in self-driving cars (and drones), the actual use of Autonomous Vehicles (AVs) is still significantly low. According to prior studies, people’s acceptance of an AV is mainly determined by trust. It is proven that people still feel much more comfortable in personalized ADAS, designed with the way people drive. Based on such needs, a new attempt for a customized ADAS considering each driver’s driving style is proposed in this paper. Each driver’s behavior is divided into two categories: assertive and defensive. In this paper, a novel customized ADAS algorithm with high classification accuracy is designed, which divides each driver based on their driving style. Each driver’s driving data is collected and simulated using CARLA, which is an open-source autonomous driving simulator. In addition, Long Short-Term Memory (LSTM) and Gated Recurrent Unit (GRU) machine learning algorithms are used to optimize the ADAS parameters. The proposed scheme results in a high classification accuracy of time series driving data. Furthermore, among the vast amount of CARLA-based feature data extracted from the drivers, distinguishable driving features are collected selectively using Support Vector Machine (SVM) technology by comparing the amount of influence on the classification of the two categories. Therefore, by extracting distinguishable features and eliminating outliers using SVM, the classification accuracy is significantly improved. Based on this classification, the ADAS sensors can be made more sensitive for the case of assertive drivers, enabling more advanced driving safety support. The proposed technology of this paper is especially important because currently, the state-of-the-art level of autonomous driving is at level 3 (based on the SAE International driving automation standards), which requires advanced functions that can assist drivers using ADAS technology.


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Cite this article
[APA Style]
Hwang, G., Jung, D., Goh, Y., & Chung, J. (2023). Personal Driving Style based ADAS Customization using Machine Learning for Public Driving Safety. Journal of Internet Computing and Services, 24(1), 39-47. DOI: 10.7472/jksii.2023.24.1.39.

[IEEE Style]
G. Hwang, D. Jung, Y. Goh, J. Chung, "Personal Driving Style based ADAS Customization using Machine Learning for Public Driving Safety," Journal of Internet Computing and Services, vol. 24, no. 1, pp. 39-47, 2023. DOI: 10.7472/jksii.2023.24.1.39.

[ACM Style]
Giyoung Hwang, Dongjun Jung, Yunyeong Goh, and Jong-Moon Chung. 2023. Personal Driving Style based ADAS Customization using Machine Learning for Public Driving Safety. Journal of Internet Computing and Services, 24, 1, (2023), 39-47. DOI: 10.7472/jksii.2023.24.1.39.