
arXiv: 2310.00923
Winter conditions pose several challenges for automated driving applications. A key challenge during winter is accurate assessment of road surface condition, as its impact on friction is a critical parameter for safely and reliably controlling a vehicle. This paper proposes a deep learning regression model, SIWNet, capable of estimating road surface friction properties from camera images. SIWNet extends state of the art by including an uncertainty estimation mechanism in the architecture. This is achieved by including an additional head in the network, which estimates a prediction interval. The prediction interval head is trained with a maximum likelihood loss function. The model was trained and tested with the SeeingThroughFog dataset, which features corresponding road friction sensor readings and images from an instrumented vehicle. Acquired results highlight the functionality of the prediction interval estimation of SIWNet, while the network also achieved similar point estimate accuracy as the previous state of the art. Furthermore, the SIWNet architecture is several times more lightweight than the previously applied state-of-the-art model, resulting in more practical and efficient deployment.
Published in IEEE Transactions on Intelligent Vehicles (2024)
FOS: Computer and information sciences, Friction, intelligent vehicles, Monitoring, Computer Vision and Pattern Recognition (cs.CV), Uncertainty, Computer Science - Computer Vision and Pattern Recognition, Computational modeling, Roads, vehicle safety, convolutional neural networks, Computer vision, Estimation, Tires
FOS: Computer and information sciences, Friction, intelligent vehicles, Monitoring, Computer Vision and Pattern Recognition (cs.CV), Uncertainty, Computer Science - Computer Vision and Pattern Recognition, Computational modeling, Roads, vehicle safety, convolutional neural networks, Computer vision, Estimation, Tires
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