Urban Crowd Detection Using SOM, DBSCAN and LBSN Data Entropy: A Twitter Experiment in New York and Madrid

The surfer and the physical location are two important concepts associated with each other in the social network-based localization service. This work consists of studying urban behavior based on location-based social networks (LBSN) data; we focus especially on the detection of abnormal events. The...

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Main Authors: Mohamed Sakkari, Abeer D. Algarni, Mourad Zaied
Format: Article
Language:English
Published: MDPI AG 2019-06-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/8/6/692
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spelling doaj-99f65caf0d1a4ab585b4e8dd41abebda2020-11-24T21:21:14ZengMDPI AGElectronics2079-92922019-06-018669210.3390/electronics8060692electronics8060692Urban Crowd Detection Using SOM, DBSCAN and LBSN Data Entropy: A Twitter Experiment in New York and MadridMohamed Sakkari0Abeer D. Algarni1Mourad Zaied2Department of electric engineering, Research Team in Intelligent Machines (RTIM), National School of Engineers of Gabes, University of Gabes, Gabes 6033, TunisiaCollege of Computer and Information Sciences, Princess Nourah Bint Abdulrahman University, Riyadh 11671, Saudi ArabiaDepartment of electric engineering, Research Team in Intelligent Machines (RTIM), National School of Engineers of Gabes, University of Gabes, Gabes 6033, TunisiaThe surfer and the physical location are two important concepts associated with each other in the social network-based localization service. This work consists of studying urban behavior based on location-based social networks (LBSN) data; we focus especially on the detection of abnormal events. The proposed crowd detection system uses the geolocated social network provided by the Twitter application programming interface (API) to automatically detect the abnormal events. The methodology we propose consists of using an unsupervised competitive learning algorithm (self-organizing map (SOM)) and a density-based clustering method (density-based spatial clustering of applications with noise (DBCSAN)) to identify and detect crowds. The second stage is to build the entropy model to determine whether the detected crowds fit into the daily pattern with reference to a spatio-temporal entropy model, or whether they should be considered as evidence that something unusual occurs in the city because of their number, size, location and time of day. To detect an abnormal event in the city, it is sufficient to determine the real entropy model and to compare it with the reference model. For the normal day, the reference model is constructed offline for each time interval. The obtained results confirm the effectiveness of our method used in the first stage (SOM and DBSCAN stage) to detect and identify clusters dynamically, and imitating human activity. These findings also clearly confirm the detection of special days in New York City (NYC), which proves the performance of our proposed model.https://www.mdpi.com/2079-9292/8/6/692location-based social networkunsupervised clusteringdensity-based clusteringentropy modelcrowd detectionhuman mobilitytweets traffic
collection DOAJ
language English
format Article
sources DOAJ
author Mohamed Sakkari
Abeer D. Algarni
Mourad Zaied
spellingShingle Mohamed Sakkari
Abeer D. Algarni
Mourad Zaied
Urban Crowd Detection Using SOM, DBSCAN and LBSN Data Entropy: A Twitter Experiment in New York and Madrid
Electronics
location-based social network
unsupervised clustering
density-based clustering
entropy model
crowd detection
human mobility
tweets traffic
author_facet Mohamed Sakkari
Abeer D. Algarni
Mourad Zaied
author_sort Mohamed Sakkari
title Urban Crowd Detection Using SOM, DBSCAN and LBSN Data Entropy: A Twitter Experiment in New York and Madrid
title_short Urban Crowd Detection Using SOM, DBSCAN and LBSN Data Entropy: A Twitter Experiment in New York and Madrid
title_full Urban Crowd Detection Using SOM, DBSCAN and LBSN Data Entropy: A Twitter Experiment in New York and Madrid
title_fullStr Urban Crowd Detection Using SOM, DBSCAN and LBSN Data Entropy: A Twitter Experiment in New York and Madrid
title_full_unstemmed Urban Crowd Detection Using SOM, DBSCAN and LBSN Data Entropy: A Twitter Experiment in New York and Madrid
title_sort urban crowd detection using som, dbscan and lbsn data entropy: a twitter experiment in new york and madrid
publisher MDPI AG
series Electronics
issn 2079-9292
publishDate 2019-06-01
description The surfer and the physical location are two important concepts associated with each other in the social network-based localization service. This work consists of studying urban behavior based on location-based social networks (LBSN) data; we focus especially on the detection of abnormal events. The proposed crowd detection system uses the geolocated social network provided by the Twitter application programming interface (API) to automatically detect the abnormal events. The methodology we propose consists of using an unsupervised competitive learning algorithm (self-organizing map (SOM)) and a density-based clustering method (density-based spatial clustering of applications with noise (DBCSAN)) to identify and detect crowds. The second stage is to build the entropy model to determine whether the detected crowds fit into the daily pattern with reference to a spatio-temporal entropy model, or whether they should be considered as evidence that something unusual occurs in the city because of their number, size, location and time of day. To detect an abnormal event in the city, it is sufficient to determine the real entropy model and to compare it with the reference model. For the normal day, the reference model is constructed offline for each time interval. The obtained results confirm the effectiveness of our method used in the first stage (SOM and DBSCAN stage) to detect and identify clusters dynamically, and imitating human activity. These findings also clearly confirm the detection of special days in New York City (NYC), which proves the performance of our proposed model.
topic location-based social network
unsupervised clustering
density-based clustering
entropy model
crowd detection
human mobility
tweets traffic
url https://www.mdpi.com/2079-9292/8/6/692
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