Robust Automated Driving in Extreme Weather

Climate, Energy & MobilityHORIZON-IAID: 101069576
EC Contribution
€66,529
Consortium Size
19 orgs
Start Year
2022
Summary

Complex environment and traffic conditions have major impact on the safety and operations of Connected and Automated Vehicles (CAVs). Weather affects not only the vehicle performance but also the roadway infrastructure, thereby increases the risk of collision and traffic scenarios variations. So far, most automated vehicles have been primarily trained and tested under optimal weather and road conditions with clear visibility. However, the systems will have to prove that they are equally reliable and accurate under any weather and road condition before they can see widespread acceptance and adoption. ROADVIEW integrates a complex in-vehicle system-of-systems able to perform advanced environment and traffic recognition and prediction and determine the appropriate course of action of a CAV in a real-world environment, including harsh weather conditions. ROADVIEW develops an embedded in-vehicle perception and decision-making system based on enhanced sensing, localisation, and improved object/person classification (including vulnerable road users). ROADVIEW ground-breaking innovations are grounded on a cost-effective multisensory setup, sensor noise modelling and filtering, collaborative perception, testing by simulation-assisted methods and integration and demonstration under different scenarios and weather conditions, reaching TRL 7 by the end of the project. ROADVIEW implements the co-programmed European Partnership “Connected, Cooperative and Automated Mobility” (CCAM) partnership by contributing to the development of a more powerful, fail-safe, resilient and weather-aware technologies. The consortium is a perfect combination of leading universities in the field and research institutes, high-tech SMEs, and strong industry leaders. Beyond their research excellence, the consortium members bring a unique portfolio of testing sites and testing infrastructure, ranging from hardware-testing facilities and rain and wind tunnels to test tracks north of the Arctic Circle.

Consortium (19)

Project Results (56)

Source: CORDIS, the EU research results database.

Publications (25)
A Noise Analysis of 4D RADAR: Robust Sensing for Automotive?
IEEE Sensors Journal· 2025DOI
Pak Hung Chan; Sepeedeh Shahbeigi Roudposhti; Xinyi Ye; Valentina Donzella
An Experimental Study on ObjectTracking
· 2025
Mahmoud Alshaikh
Automotive DNN-Based Object Detection in the Presence of Lens Obstruction and Video Compression
IEEE Access· 2025DOI
Gabriele Baris, Boda Li, Pak Hung Chan, Carlo Alberto Avizzano, Valentina Donzella
LiDAR De-Snow Score (DSS): Combining Quality and Perception Metrics for Optimized De-Noising
IEEE Sensors Journal· 2025DOI
Valentina Donzella, Pak Hung Chan, Daniel Gummadi, Abu Mohammed Raisuddin, Eren Erdal Aksoy
Raw Camera Data Object Detectors: An Optimisation for Automotive Video Processing and Transmission
IEEE Access· 2025DOI
Pak Hung Chan, Chuheng Wei, Anthony Huggett, Valentina Donzella
Road Grip Uncertainty Estimation Through Surface State Segmentation
Lecture Notes in Computer Science, Image Analysis· 2025DOI
Jyri Maanpää, Julius Pesonen, Iaroslav Melekhov, Heikki Hyyti, Juha Hyyppä
3D-OutDet: A Fast and Memory Efficient Outlier Detector for 3D LiDAR Point Clouds in Adverse Weather
2024 IEEE Intelligent Vehicles Symposium (IV)· 2024DOI
Raisuddin, Abu Mohammed; Cortinhal, Tiago; Holmblad, Jesper; Aksoy, Eren Erdal
A Comparative Review of the SWEET Simulator: Theoretical Verification Against Other Simulators
Journal of Imaging· 2024DOI
Amine Ben-Daoued; Frédéric Bernardin; Pierre Duthon
A Novel Score-based LiDAR Point Cloud degradation Analysis Method
IEEE Transactions and Journals· 2024DOI
Sepeedeh Shahbeigi, Honahan Robinson, Valentina Donzella
Creation of digital models for accelerated and reliable testing of automated systems in adverse weather
Autonomous Systems for Security and Defence· 2024DOI
Tuomas Herranen, Erik Henriksson, Pak Hung Chan, Yuri Poledna, Pierre Duthon, Amine Ben-Daoued, Maikol Drechsler, Valentina Donzella
Dense Road Surface Grip Map Prediction from Multimodal Image Data
Lecture Notes in Computer Science, Pattern Recognition· 2024DOI
Jyri Maanpää, Julius Pesonen, Heikki Hyyti, Iaroslav Melekhov, Juho Kannala, Petri Manninen, Antero Kukko, Juha Hyyppä
From operational design domain to test cases: A methodology to include harsh weather
Open Research Europe· 2024DOI
Fredrik Warg; Valentina Donzella; Pak Hung Chan; Jonathan Robinson; Yuri Poledna; Sebastien Liandrat; Umut Cihan; Maytheewat Aramrattana; Graham Lee; Eren Erdal Aksoy
Parametric Physics-Based Snow Model for Automotive Cameras
2024 IEEE SENSORS· 2024DOI
Pak Hung Chan, Kurt Debattista, Valentina Donzella
REHEARSE: adveRse wEatHEr datAset for sensoRy noiSe modEls
2024 IEEE Intelligent Vehicles Symposium (IV)· 2024DOI
Yuri Poledna, Maikol Funk Drechsler, Valentina Donzella, Pak Hung Chan, Pierre Duthon, Werner Huber
Semantics-aware LiDAR-Only Pseudo Point Cloud Generation for 3D Object Detection
2024 IEEE Intelligent Vehicles Symposium (IV)· 2024DOI
Tiago Cortinhal, Idriss Gouigah, Eren Erdal Aksoy
Synthetic Extreme Weather for AI training: Concept and Validation
2023 Third International Conference on Digital Data Processing (DDP)· 2024DOI
Letícia Cristófoli Duarte Silva, Maikol Funk Drechsler, Yuri Poledna, Werner Huber, Thiago Antonio Fiorentin
The inconvenient truth of ground truth errors in automotive datasets and DNN-based detection
Data-Centric Engineering· 2024DOI
Chan, Pak Hung; Li, Boda; Baris, Gabriele; Sadiq, Qasim; Donzella, Valentina
Vehicle Dynamics Parameter Estimation Methodology for Virtual Automated Driving Testing
2024 IEEE International Automated Vehicle Validation Conference (IAVVC)· 2024DOI
Maikol Funk Drechsler, Yuri Poledna, Mattias Hjort, Sogol Kharrazi, Werner Huber
Analysis of Faster R-CNN network prediction in the presence of lens occlusion and video compression
TechRxiv· 2023DOI
Gabriele Baris, Boda Li, Pak Hung Chan, Carlo Alberto Avizzano, Valentina Donzella
Correlating traditional image quality metrics and DNN-based object detection: a case study with compressed camera data
TechRxiv· 2023DOI
Daniel Gummadi, Pak Hung Chan, Hetian Wang, Valentina Donzella
Depth- and semantics-aware multi-modal domain translation: Generating 3D panoramic color images from LiDAR point clouds
Robotics and Autonomous Systems· 2023DOI
Tiago Cortinhal, Eren Erdal Aksoy
Pixelwise Road Surface Slipperiness Estimation for Autonomous Driving with Weakly Supervised Learning
Machine Learning, Data Science and Artificial Intelligence· 2023
Julius Pesonen
Simulation numérique de capteurs perceptifs du véhicule autonome sous conditions météorologiques dégradées
ATEC ITS Congress· 2023
Amine Ben-Daoued; Frédéric Bernardin; Pierre Duthon
SWEET: A Realistic Multiwavelength 3D Simulator for Automotive Perceptive Sensors in Foggy Conditions
Journal of Imaging· 2023DOI
Amine Ben-Daoued; Pierre Duthon; Frédéric Bernardin
The effect of camera data degradation factors on panoptic segmentation for automated driving
26th IEEE International Conference on Intelligent Transportation Systems (ITSC 2023)· 2023
Wang, Yiting, Zhao, Haonan, Debattista, Kurt and Donzella, Valentina
Deliverables (30)
Documents, reports
Documents, reports
Documents, reports
Documents, reports
Demonstrators, pilots, prototypes
Websites, patent fillings, videos etc.
Documents, reports
Other Results (1)
Periodic Reporting for period 2 - ROADVIEW (Robust Automated Driving in Extreme Weather)