RoadEye: Road Condition Monitoring using Computer Vision and Deep Learning Techniques

 
δείτε την πρωτότυπη σελίδα τεκμηρίου
στον ιστότοπο του αποθετηρίου του φορέα για περισσότερες πληροφορίες και για να δείτε όλα τα ψηφιακά αρχεία του τεκμηρίου*
κοινοποιήστε το τεκμήριο




2020 (EL)

RoadEye: Road Condition Monitoring using Computer Vision and Deep Learning Techniques (EN)

Theoharatos, Christos

The RoadEye project proposes the development and demonstration of an integrated application (or system) for real-time road condition monitoring, using a camera and an embedded system, which can be integrated in complete ADAS systems that provide a full range of functions. This application will be able to track and detect the condition of the road surface in real-time, within a distance of 5-to-25 meters from the vehicle, based on computer vision and ma-chine/deep learning techniques. The techniques that are being developed within the project will be able to classify the state of the road into some preselected categories such as normal road and slippery road (e.g. wet, snow etc.), and even detect surface anomalies within the road such as potholes and speed bumps / humps. (EN)

info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
Άρθρο το οποίο έχει περάσει από ομότιμη αξιολόγηση (EL)

Deep learning (EN)
Computer vision (EN)
Embedded systems (EN)
Road condition monitoring system (EN)
Heterogeneous computing (EN)


International Conference on Information, Intelligence, Systems and Applications

Αγγλική γλώσσα

2020-05-22


International Conference on Information, Intelligence, Systems and Applications (EL)
Information, Intelligence, Systems and Applications (EN)

International Conference on Information, Intelligence, Systems and Applications; Τόμ. 1, Αρ. 1 (2020): Project Track; 59-63 (EL)
Information, Intelligence, Systems and Applications; Τόμ. 1, Αρ. 1 (2020): Project Track; 59-63 (EN)

Copyright (c) 2020 International Conference on Information, Intelligence, Systems and Applications (EL)



*Η εύρυθμη και αδιάλειπτη λειτουργία των διαδικτυακών διευθύνσεων των συλλογών (ψηφιακό αρχείο, καρτέλα τεκμηρίου στο αποθετήριο) είναι αποκλειστική ευθύνη των αντίστοιχων Φορέων περιεχομένου.