Impact Statement:This research presents a transformative approach to road infrastructure management, introducing a real time, efficient system for road quality analysis. The proposed syst...Show More
Abstract:
Road infrastructure is essential for transportation safety and efficiency. However, the current methods for assessing road conditions, crucial for effective planning and ...Show MoreMetadata
Impact Statement:
This research presents a transformative approach to road infrastructure management, introducing a real time, efficient system for road quality analysis. The proposed system can simultaneously analyze road friction level, unevenness, and material, making it a unique and valuable resource for intelligent driving assistance systems. By leveraging advanced machine-learning techniques, the study offers a solution to the challenges of high costs, time-consuming procedures, and infrequent data collection in road condition surveys. The proposed system outperforms existing benchmarks and demonstrates robustness and efficiency, even with limited training data. Its deployment on an edge device allows for real-time analysis, significantly contributing to developing safer and more efficient transport systems. This work, therefore, holds substantial potential for improving infrastructure management and public safety by enabling a timely and accurate assessment of road conditions.
Abstract:
Road infrastructure is essential for transportation safety and efficiency. However, the current methods for assessing road conditions, crucial for effective planning and maintenance, suffer from high costs, time-intensive procedures, infrequent data collection, and limited real-time capabilities. This article presents an efficient lightweight system to analyze road quality from video feeds in real time. The backbone of the system is EdgeFusionViT, a novel vision transformer (ViT)-based architecture that uses an attention-based late fusion mechanism. The proposed architecture outperforms lightweight convolutional neural network (CNN)-based and ViT-based models. Its practicality is demonstrated by its deployment on an edge device, the Nvidia Jetson Orin Nano, enabling real-time road analysis at 12 frames per second. EdgeFusionViT outperforms existing benchmarks, achieving an impressive accuracy of 89.76% on the road surface condition dataset (RSCD). Notably, the model maintains a commend...
Published in: IEEE Transactions on Artificial Intelligence ( Volume: 5, Issue: 10, October 2024)