Low-Cost System for Automatic Recognition of Driving Pattern in Assessing Interurban Mobility using Geo-Information
Oscar Romero, Aika Silveira Miura, Lorena Parra, Jaime Lloret
TLDR
This paper introduces a low-cost system using geo-information and an ANN to automatically recognize driving patterns, improving safety and efficiency.
Key contributions
- Proposes a low-cost system for automatic driving pattern recognition using two physical sensors and an ANN.
- System detects abnormal driving styles and provides real-time audio warnings to drivers.
- Leverages geo-information (velocity, position, time, turning speed) to enhance classification accuracy.
- Achieves 83% average accuracy, improving to 92% for normal/aggressive driving styles.
Why it matters
Many existing vehicles lack driver assessment systems, contributing to accidents. This paper offers an affordable solution that can be integrated into older cars. By incorporating geo-information, it significantly boosts the accuracy of driving style detection, promoting safer and more efficient interurban mobility.
Original Abstract
Mobility in urban and interurban areas, mainly by cars, is a day-to-day activity of many people. However, some of its main drawbacks are traffic jams and accidents. Newly made vehicles have pre-installed driving evaluation systems, which can prevent accidents. However, most cars on our roads do not have driver assessment systems. In this paper, we propose an approach for recognising driving styles and enabling drivers to reach safer and more efficient driving. The system consists of two physical sensors connected to a device node with a display and a speaker. An artificial neural network (ANN) is included in the node, which analyses the data from the sensors, and then recognises the driving style. When an abnormal driving pattern is detected, the speaker will play a warning message. The prototype was assembled and tested using an interurban road, in particular on a conventional road with three driving styles. The gathered data were used to train and validate the ANN. Results, in terms of accuracy, indicate that better accuracy is obtained when the velocity, position (latitude and longitude), time, and turning speed for the 3-axis are used, offering an average accuracy of 83%. If the classification is performed considering just two driving styles, normal and aggressive, then the accuracy reaches 92%. When the geo-information and time data are included, the main novelty of this paper, the classification accuracy is improved by 13%.
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