Walking Secure: Safe Routing Planning Algorithm and Pedestrian’s Crossing Intention Detector Based on Fuzzy Logic App

Improving road safety through artificial intelligence is now crucial to achieving more secure smart cities. With this objective, a mobile app based on the integration of the smartphone sensors and a fuzzy logic strategy to determine the pedestrian’s crossing intention around crosswalks is presented....

Full description

Bibliographic Details
Main Authors: José Manuel Lozano Domínguez, Tomás de J. Mateo Sanguino
Format: Article
Language:English
Published: MDPI AG 2021-01-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/2/529
id doaj-5cac19b878da4d7fa22b3e84cc79c0de
record_format Article
spelling doaj-5cac19b878da4d7fa22b3e84cc79c0de2021-01-14T00:03:41ZengMDPI AGSensors1424-82202021-01-012152952910.3390/s21020529Walking Secure: Safe Routing Planning Algorithm and Pedestrian’s Crossing Intention Detector Based on Fuzzy Logic AppJosé Manuel Lozano Domínguez0Tomás de J. Mateo Sanguino1Department of Electronic Engineering, Computer Systems and Automatics, University of Huelva, Av. de las Artes s/n, 21007 Huelva, SpainDepartment of Electronic Engineering, Computer Systems and Automatics, University of Huelva, Av. de las Artes s/n, 21007 Huelva, SpainImproving road safety through artificial intelligence is now crucial to achieving more secure smart cities. With this objective, a mobile app based on the integration of the smartphone sensors and a fuzzy logic strategy to determine the pedestrian’s crossing intention around crosswalks is presented. The app developed also allows the calculation, tracing and guidance of safe routes thanks to an optimization algorithm that includes pedestrian areas on the paths generated over the whole city through a cloud database (i.e., zebra crossings, pedestrian streets and walkways). The experimentation carried out consisted in testing the fuzzy logic strategy with a total of 31 volunteers crossing and walking around a crosswalk. For that, the fuzzy logic approach was subjected to a total of 3120 samples generated by the volunteers. It has been proven that a smartphone can be successfully used as a crossing intention detector system with an accuracy of 98.63%, obtaining a true positive rate of 98.27% and a specificity of 99.39% according to a receiver operating characteristic analysis. Finally, a total of 30 routes were calculated by the proposed algorithm and compared with Google Maps considering the values of time, distance and safety along the routes. As a result, the routes generated by the proposed algorithm were safer than the routes obtained with Google Maps, achieving an increase in the use of safe pedestrian areas of at least 183%.https://www.mdpi.com/1424-8220/21/2/529crossing intention detectorAndroid applicationroad safetysmart citiessafe routespedestrians
collection DOAJ
language English
format Article
sources DOAJ
author José Manuel Lozano Domínguez
Tomás de J. Mateo Sanguino
spellingShingle José Manuel Lozano Domínguez
Tomás de J. Mateo Sanguino
Walking Secure: Safe Routing Planning Algorithm and Pedestrian’s Crossing Intention Detector Based on Fuzzy Logic App
Sensors
crossing intention detector
Android application
road safety
smart cities
safe routes
pedestrians
author_facet José Manuel Lozano Domínguez
Tomás de J. Mateo Sanguino
author_sort José Manuel Lozano Domínguez
title Walking Secure: Safe Routing Planning Algorithm and Pedestrian’s Crossing Intention Detector Based on Fuzzy Logic App
title_short Walking Secure: Safe Routing Planning Algorithm and Pedestrian’s Crossing Intention Detector Based on Fuzzy Logic App
title_full Walking Secure: Safe Routing Planning Algorithm and Pedestrian’s Crossing Intention Detector Based on Fuzzy Logic App
title_fullStr Walking Secure: Safe Routing Planning Algorithm and Pedestrian’s Crossing Intention Detector Based on Fuzzy Logic App
title_full_unstemmed Walking Secure: Safe Routing Planning Algorithm and Pedestrian’s Crossing Intention Detector Based on Fuzzy Logic App
title_sort walking secure: safe routing planning algorithm and pedestrian’s crossing intention detector based on fuzzy logic app
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-01-01
description Improving road safety through artificial intelligence is now crucial to achieving more secure smart cities. With this objective, a mobile app based on the integration of the smartphone sensors and a fuzzy logic strategy to determine the pedestrian’s crossing intention around crosswalks is presented. The app developed also allows the calculation, tracing and guidance of safe routes thanks to an optimization algorithm that includes pedestrian areas on the paths generated over the whole city through a cloud database (i.e., zebra crossings, pedestrian streets and walkways). The experimentation carried out consisted in testing the fuzzy logic strategy with a total of 31 volunteers crossing and walking around a crosswalk. For that, the fuzzy logic approach was subjected to a total of 3120 samples generated by the volunteers. It has been proven that a smartphone can be successfully used as a crossing intention detector system with an accuracy of 98.63%, obtaining a true positive rate of 98.27% and a specificity of 99.39% according to a receiver operating characteristic analysis. Finally, a total of 30 routes were calculated by the proposed algorithm and compared with Google Maps considering the values of time, distance and safety along the routes. As a result, the routes generated by the proposed algorithm were safer than the routes obtained with Google Maps, achieving an increase in the use of safe pedestrian areas of at least 183%.
topic crossing intention detector
Android application
road safety
smart cities
safe routes
pedestrians
url https://www.mdpi.com/1424-8220/21/2/529
work_keys_str_mv AT josemanuellozanodominguez walkingsecuresaferoutingplanningalgorithmandpedestrianscrossingintentiondetectorbasedonfuzzylogicapp
AT tomasdejmateosanguino walkingsecuresaferoutingplanningalgorithmandpedestrianscrossingintentiondetectorbasedonfuzzylogicapp
_version_ 1724338686280073216