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Road Detection, Monitoring, and Maintenance Using Remotely Sensed Data
by
Fiorentini, Nicholas
, Losa, Massimo
in
Accuracy
/ Algorithms
/ Artificial intelligence
/ Automation
/ Business metrics
/ Classification
/ Critical infrastructure
/ Data mining
/ Deep learning
/ Economic development
/ Economic growth
/ Ground penetrating radar
/ Image resolution
/ Infrastructure
/ Infrastructure (Economics)
/ Machine learning
/ Methods
/ Monitoring
/ non-destructive techniques
/ Nondestructive testing
/ Performance evaluation
/ Public safety
/ Radar detection
/ Radar imaging
/ Remote sensing
/ remotely sensed data
/ Road construction
/ road detection
/ Road maintenance
/ road monitoring
/ Roads & highways
/ Safety management
/ Satellite imagery
/ Semantics
/ Unpaved roads
2025
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Road Detection, Monitoring, and Maintenance Using Remotely Sensed Data
by
Fiorentini, Nicholas
, Losa, Massimo
in
Accuracy
/ Algorithms
/ Artificial intelligence
/ Automation
/ Business metrics
/ Classification
/ Critical infrastructure
/ Data mining
/ Deep learning
/ Economic development
/ Economic growth
/ Ground penetrating radar
/ Image resolution
/ Infrastructure
/ Infrastructure (Economics)
/ Machine learning
/ Methods
/ Monitoring
/ non-destructive techniques
/ Nondestructive testing
/ Performance evaluation
/ Public safety
/ Radar detection
/ Radar imaging
/ Remote sensing
/ remotely sensed data
/ Road construction
/ road detection
/ Road maintenance
/ road monitoring
/ Roads & highways
/ Safety management
/ Satellite imagery
/ Semantics
/ Unpaved roads
2025
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Do you wish to request the book?
Road Detection, Monitoring, and Maintenance Using Remotely Sensed Data
by
Fiorentini, Nicholas
, Losa, Massimo
in
Accuracy
/ Algorithms
/ Artificial intelligence
/ Automation
/ Business metrics
/ Classification
/ Critical infrastructure
/ Data mining
/ Deep learning
/ Economic development
/ Economic growth
/ Ground penetrating radar
/ Image resolution
/ Infrastructure
/ Infrastructure (Economics)
/ Machine learning
/ Methods
/ Monitoring
/ non-destructive techniques
/ Nondestructive testing
/ Performance evaluation
/ Public safety
/ Radar detection
/ Radar imaging
/ Remote sensing
/ remotely sensed data
/ Road construction
/ road detection
/ Road maintenance
/ road monitoring
/ Roads & highways
/ Safety management
/ Satellite imagery
/ Semantics
/ Unpaved roads
2025
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Road Detection, Monitoring, and Maintenance Using Remotely Sensed Data
Journal Article
Road Detection, Monitoring, and Maintenance Using Remotely Sensed Data
2025
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Overview
Roads are a form of critical infrastructure, influencing economic growth, mobility, and public safety. However, the management, monitoring, and maintenance of road networks remain a challenge, particularly given limited budgets and the complexity of assessing widespread infrastructure. This Special Issue on “Road Detection, Monitoring, and Maintenance Using Remotely Sensed Data” presents innovative strategies leveraging remote sensing technologies, artificial intelligence (AI), and non-destructive testing (NDT) to optimize road infrastructure assessment. The ten papers published in this issue explore diverse methodologies, including novel deep learning algorithms for road inventory, novel methods for pavement crack detection, AI-enhanced ground-penetrating radar (GPR) imaging for subsurface assessment, high-resolution optical satellite imagery for unpaved road assessment, and aerial orthophotography for road mapping. Collectively, these studies demonstrate the transformative potential of remotely sensed data for improving the efficiency, accuracy, and scalability of road monitoring and maintenance processes. The findings highlight the importance of integrating multi-source remote sensing data with advanced AI-based techniques to develop cost-effective, automated, and scalable solutions for road authorities. As the first edition of this Special Issue, these contributions lay the groundwork for future advancements in remote sensing applications for road network management.
Publisher
MDPI AG
Subject
/ Methods
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