An Architectural Multi-Agent System for a Pavement Monitoring System with Pothole Recognition in UAV Images
In recent years, maintenance work on public transport routes has drastically decreased in many countries due to difficult economic situations. The various studies that have been conducted by groups of drivers and groups related to road safety concluded that accidents are increasing due to the poor c...
Main Authors: | , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
MDPI AG
2020-10-01
|
Series: | Sensors |
Subjects: | |
Online Access: | https://www.mdpi.com/1424-8220/20/21/6205 |
id |
doaj-4a274a89e28440cb94f14e8d217c642e |
---|---|
record_format |
Article |
spelling |
doaj-4a274a89e28440cb94f14e8d217c642e2020-11-25T03:44:04ZengMDPI AGSensors1424-82202020-10-01206205620510.3390/s20216205An Architectural Multi-Agent System for a Pavement Monitoring System with Pothole Recognition in UAV ImagesLuís Augusto Silva0Héctor Sanchez San Blas1David Peral Peral García2André Sales Sales Mendes3Gabriel Villarubia Villarubia González4Expert Systems and Applications Lab—ESALAB, Faculty of Science, University of Salamanca, Plaza de los Caídos s/n, 37008 Salamanca, SpainExpert Systems and Applications Lab—ESALAB, Faculty of Science, University of Salamanca, Plaza de los Caídos s/n, 37008 Salamanca, SpainExpert Systems and Applications Lab—ESALAB, Faculty of Science, University of Salamanca, Plaza de los Caídos s/n, 37008 Salamanca, SpainExpert Systems and Applications Lab—ESALAB, Faculty of Science, University of Salamanca, Plaza de los Caídos s/n, 37008 Salamanca, SpainExpert Systems and Applications Lab—ESALAB, Faculty of Science, University of Salamanca, Plaza de los Caídos s/n, 37008 Salamanca, SpainIn recent years, maintenance work on public transport routes has drastically decreased in many countries due to difficult economic situations. The various studies that have been conducted by groups of drivers and groups related to road safety concluded that accidents are increasing due to the poor conditions of road surfaces, even affecting the condition of vehicles through costly breakdowns. Currently, the processes of detecting any type of damage to a road are carried out manually or are based on the use of a road vehicle, which incurs a high labor cost. To solve this problem, many research centers are investigating image processing techniques to identify poor-condition road areas using deep learning algorithms. The main objective of this work is to design of a distributed platform that allows the detection of damage to transport routes using drones and to provide the results of the most important classifiers. A case study is presented using a multi-agent system based on PANGEA that coordinates the different parts of the architecture using techniques based on ubiquitous computing. The results obtained by means of the customization of the You Only Look Once (YOLO) v4 classifier are promising, reaching an accuracy of more than 95%. The images used have been published in a dataset for use by the scientific community.https://www.mdpi.com/1424-8220/20/21/6205smart applicationsdronesYOLOv4crack detectionvirtual organizations of agents |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Luís Augusto Silva Héctor Sanchez San Blas David Peral Peral García André Sales Sales Mendes Gabriel Villarubia Villarubia González |
spellingShingle |
Luís Augusto Silva Héctor Sanchez San Blas David Peral Peral García André Sales Sales Mendes Gabriel Villarubia Villarubia González An Architectural Multi-Agent System for a Pavement Monitoring System with Pothole Recognition in UAV Images Sensors smart applications drones YOLOv4 crack detection virtual organizations of agents |
author_facet |
Luís Augusto Silva Héctor Sanchez San Blas David Peral Peral García André Sales Sales Mendes Gabriel Villarubia Villarubia González |
author_sort |
Luís Augusto Silva |
title |
An Architectural Multi-Agent System for a Pavement Monitoring System with Pothole Recognition in UAV Images |
title_short |
An Architectural Multi-Agent System for a Pavement Monitoring System with Pothole Recognition in UAV Images |
title_full |
An Architectural Multi-Agent System for a Pavement Monitoring System with Pothole Recognition in UAV Images |
title_fullStr |
An Architectural Multi-Agent System for a Pavement Monitoring System with Pothole Recognition in UAV Images |
title_full_unstemmed |
An Architectural Multi-Agent System for a Pavement Monitoring System with Pothole Recognition in UAV Images |
title_sort |
architectural multi-agent system for a pavement monitoring system with pothole recognition in uav images |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2020-10-01 |
description |
In recent years, maintenance work on public transport routes has drastically decreased in many countries due to difficult economic situations. The various studies that have been conducted by groups of drivers and groups related to road safety concluded that accidents are increasing due to the poor conditions of road surfaces, even affecting the condition of vehicles through costly breakdowns. Currently, the processes of detecting any type of damage to a road are carried out manually or are based on the use of a road vehicle, which incurs a high labor cost. To solve this problem, many research centers are investigating image processing techniques to identify poor-condition road areas using deep learning algorithms. The main objective of this work is to design of a distributed platform that allows the detection of damage to transport routes using drones and to provide the results of the most important classifiers. A case study is presented using a multi-agent system based on PANGEA that coordinates the different parts of the architecture using techniques based on ubiquitous computing. The results obtained by means of the customization of the You Only Look Once (YOLO) v4 classifier are promising, reaching an accuracy of more than 95%. The images used have been published in a dataset for use by the scientific community. |
topic |
smart applications drones YOLOv4 crack detection virtual organizations of agents |
url |
https://www.mdpi.com/1424-8220/20/21/6205 |
work_keys_str_mv |
AT luisaugustosilva anarchitecturalmultiagentsystemforapavementmonitoringsystemwithpotholerecognitioninuavimages AT hectorsanchezsanblas anarchitecturalmultiagentsystemforapavementmonitoringsystemwithpotholerecognitioninuavimages AT davidperalperalgarcia anarchitecturalmultiagentsystemforapavementmonitoringsystemwithpotholerecognitioninuavimages AT andresalessalesmendes anarchitecturalmultiagentsystemforapavementmonitoringsystemwithpotholerecognitioninuavimages AT gabrielvillarubiavillarubiagonzalez anarchitecturalmultiagentsystemforapavementmonitoringsystemwithpotholerecognitioninuavimages AT luisaugustosilva architecturalmultiagentsystemforapavementmonitoringsystemwithpotholerecognitioninuavimages AT hectorsanchezsanblas architecturalmultiagentsystemforapavementmonitoringsystemwithpotholerecognitioninuavimages AT davidperalperalgarcia architecturalmultiagentsystemforapavementmonitoringsystemwithpotholerecognitioninuavimages AT andresalessalesmendes architecturalmultiagentsystemforapavementmonitoringsystemwithpotholerecognitioninuavimages AT gabrielvillarubiavillarubiagonzalez architecturalmultiagentsystemforapavementmonitoringsystemwithpotholerecognitioninuavimages |
_version_ |
1724516402499420160 |