Revistas
Revista:
IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS
ISSN:
1524-9050
Año:
2022
Vol.:
23
N°:
11
Págs.:
22378 - 22385
The future of autonomous driving is slowly approaching, but there are still many steps to take before it can become a reality. It is crucial to pay attention to road infrastructure, because without it, intelligent vehicles will not be able to operate reliably, and it will never be possible to dispense of driver's control. This paper presents the work carried out for the detection of road markings damage using computer vision techniques. This is a complex task for which there are currently not many papers and large image sets in the literature. This study uses images from the public Road Damage Detection dataset for the D44 defect and also provides 971 new labelled images for Spanish roads. For this purpose, three detectors based on deep learning architectures (Faster RCNN, SDD and EfficientDet) have been used and single-source and mixed-source models have been studied to find the model that best fits the target images. Finally, F1-score values reaching 0.929 and 0.934 have been obtained for Japanese and Spanish images respectively which improve the state-of-the-art results by 25%. It can be concluded that the results of this study are promising, although the collection of many more images will be necessary for the scientific community to continue advancing in the future in this field of research.
Revista:
SENSORS
ISSN:
1424-8220
Año:
2021
Vol.:
21
N°:
4
Págs.:
1254
European road safety has improved greatly in recent decades. However, the current numbers are still far away to reach the European Commission's road safety targets. In this context, Cooperative Intelligent Transport Systems (C-ITS) are expected to significantly improve road safety, traffic efficiency and comfort of driving, by helping the driver to make better decisions and adapt to the traffic situation. This paper puts forward two vision-based applications for traffic sign recognition (TSR) and real-time weather alerts, such as for fog-banks. These modules will support operators in road infrastructure maintenance tasks as well as drivers, giving them valuable information via C-ITS messages. Different state-of-the-art methods are analysed using both publicly available datasets (GTSB) as well as our own image databases (Ceit-TSR and Ceit-Foggy). The selected models for TSR implementation are based on Aggregated Chanel Features (ACF) and Convolutional Neural Networks (CNN) that reach more than 90% accuracy in real time. Regarding fog detection, an image feature extraction method on different colour spaces is proposed to differentiate sunny, cloudy and foggy scenes, as well as its visibility level. Both applications are already running in an onboard probe vehicle system.
Revista:
LECTURE NOTES IN COMPUTER SCIENCE
ISSN:
0302-9743
Año:
2018
Vol.:
10796
Págs.:
149 - 158
As urbanization increases, mobility becomes more complex and supposes a major challenge for public transportation authorities. An approach to tackle this problem is to introduce systems that ease vehicle operation and monitoring. However, these systems are hard to maintain and integrate. On this paper, a new information technology (IT) architecture is introduced. Developed by the ITxPT association, the architecture aims to improve the cost-effective implementation of the IT modules in public transport fleets. This architecture has capitalized the work of several European projects to create a solid standard ready to test on field. Finally, a use case of the introduction of an eco-driving assistance system that employs this architecture in real operation is presented.