Varying Road Surface Condition Estimation in Ego and Adjacent Lanes
Paper in proceeding, 2023

Images from a front-facing camera on a vehicle can be used to estimate the varying Road Surface Conditions (RSC) ahead to warn the driver or to initiate automatic speed reduction in slippery road conditions. Previous works have successfully used deep-learning models to identify the RSC in the ego lane. Here, we focused on developing a model for predicting the RSC in multiple lanes simultaneously, relevant if changing lanes is an option. The proposed model estimate the RSC on the ego lane as well as in the adjacent lanes only if the adjacent lanes exists in the image. Furthermore, a data set is developed using more than 12,000 images from public benchmarks and privately captured images to facilitate multi-lane RSC estimation. Each image is assigned three RSC labels: with one for the ego, left and right lanes. The classes used are dry, wet, snow and snow-tracks. Our analysis with several network architectures has revealed that the model is capable of estimating the RSC in adjacent lanes with a similar level of performance as of the ego-lane.

Road state estimation

Road surface condition classification

Vision-based methods

Author

Hasith Karunasekera

Chalmers, Electrical Engineering, Systems and control

Albin Ekstrom

Student at Chalmers

Amanda Siklund

Student at Chalmers

Erik Hansson

Student at Chalmers

Filip Anjou

Student at Chalmers

Max Adolfsson

Student at Chalmers

Vincent Carlson

Student at Chalmers

Jonas Sjöberg

Chalmers, Electrical Engineering, Systems and control

IEEE Intelligent Vehicles Symposium, Proceedings

Vol. 2023-June
9798350346916 (ISBN)

34th IEEE Intelligent Vehicles Symposium, IV 2023
Anchorage, USA,

Subject Categories

Infrastructure Engineering

DOI

10.1109/IV55152.2023.10186540

More information

Latest update

8/30/2023