ICE-MoCha: Intelligent Crowd Engineering using Mobility Characterization and Analytics

Human injuries and casualties at entertaining, religious, or political crowd events often occur due to the lack of proper crowd safety management. For instance, for a large scale moving crowd, a minor accident can create a panic for the people to start stampede. Although many smart video surveillanc...

Full description

Bibliographic Details
Main Authors: Abdoh Jabbari, Khalid J. Almalki, Baek-Young Choi, Sejun Song
Format: Article
Language:English
Published: MDPI AG 2019-02-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/19/5/1025
id doaj-36d95c5e8cf649609083f34831f65b09
record_format Article
spelling doaj-36d95c5e8cf649609083f34831f65b092020-11-25T01:29:15ZengMDPI AGSensors1424-82202019-02-01195102510.3390/s19051025s19051025ICE-MoCha: Intelligent Crowd Engineering using Mobility Characterization and AnalyticsAbdoh Jabbari0Khalid J. Almalki1Baek-Young Choi2Sejun Song3School of Computing and Engineering, University of Missouri-Kansas City, Kansas City, MO 64110, USASchool of Computing and Engineering, University of Missouri-Kansas City, Kansas City, MO 64110, USASchool of Computing and Engineering, University of Missouri-Kansas City, Kansas City, MO 64110, USASchool of Computing and Engineering, University of Missouri-Kansas City, Kansas City, MO 64110, USAHuman injuries and casualties at entertaining, religious, or political crowd events often occur due to the lack of proper crowd safety management. For instance, for a large scale moving crowd, a minor accident can create a panic for the people to start stampede. Although many smart video surveillance tools, inspired by the recent advanced artificial intelligence (AI) technology and machine learning (ML) algorithms, enable object detection and identification, it is still challenging to predict the crowd mobility in real-time for preventing potential disasters. In this paper, we propose an intelligent crowd engineering platform using mobility characterization and analytics named ICE-MoCha. ICE-MoCha is to assist safety management for mobile crowd events by predicting and thus helping to prevent potential disasters through real-time radio frequency (RF) data characterization and analysis. The existing video surveillance based approaches lack scalability thus have limitations in its capability for wide open areas of crowd events. Via effectively integrating RF signal analysis, our approach can enhance safety management for mobile crowd. We particularly tackle the problems of identification, speed, and direction detection for the mobile group, among various crowd mobility characteristics. We then apply those group semantics to track the crowd status and predict any potential accidents and disasters. Taking the advantages of power-efficiency, cost-effectiveness, and ubiquitous availability, we specifically use and analyze a Bluetooth low energy (BLE) signal. We have conducted experiments of ICE-MoCha in a real crowd event as well as controlled indoor and outdoor lab environments. The results show the feasibility of ICE-MoCha detecting the mobile crowd characteristics in real-time, indicating it can effectively help the crowd management tasks to avoid potential crowd movement related incidents.https://www.mdpi.com/1424-8220/19/5/1025crowd safety managementBluetooth low energy (BLE)Internet of Things (IoT)RSSImobility
collection DOAJ
language English
format Article
sources DOAJ
author Abdoh Jabbari
Khalid J. Almalki
Baek-Young Choi
Sejun Song
spellingShingle Abdoh Jabbari
Khalid J. Almalki
Baek-Young Choi
Sejun Song
ICE-MoCha: Intelligent Crowd Engineering using Mobility Characterization and Analytics
Sensors
crowd safety management
Bluetooth low energy (BLE)
Internet of Things (IoT)
RSSI
mobility
author_facet Abdoh Jabbari
Khalid J. Almalki
Baek-Young Choi
Sejun Song
author_sort Abdoh Jabbari
title ICE-MoCha: Intelligent Crowd Engineering using Mobility Characterization and Analytics
title_short ICE-MoCha: Intelligent Crowd Engineering using Mobility Characterization and Analytics
title_full ICE-MoCha: Intelligent Crowd Engineering using Mobility Characterization and Analytics
title_fullStr ICE-MoCha: Intelligent Crowd Engineering using Mobility Characterization and Analytics
title_full_unstemmed ICE-MoCha: Intelligent Crowd Engineering using Mobility Characterization and Analytics
title_sort ice-mocha: intelligent crowd engineering using mobility characterization and analytics
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2019-02-01
description Human injuries and casualties at entertaining, religious, or political crowd events often occur due to the lack of proper crowd safety management. For instance, for a large scale moving crowd, a minor accident can create a panic for the people to start stampede. Although many smart video surveillance tools, inspired by the recent advanced artificial intelligence (AI) technology and machine learning (ML) algorithms, enable object detection and identification, it is still challenging to predict the crowd mobility in real-time for preventing potential disasters. In this paper, we propose an intelligent crowd engineering platform using mobility characterization and analytics named ICE-MoCha. ICE-MoCha is to assist safety management for mobile crowd events by predicting and thus helping to prevent potential disasters through real-time radio frequency (RF) data characterization and analysis. The existing video surveillance based approaches lack scalability thus have limitations in its capability for wide open areas of crowd events. Via effectively integrating RF signal analysis, our approach can enhance safety management for mobile crowd. We particularly tackle the problems of identification, speed, and direction detection for the mobile group, among various crowd mobility characteristics. We then apply those group semantics to track the crowd status and predict any potential accidents and disasters. Taking the advantages of power-efficiency, cost-effectiveness, and ubiquitous availability, we specifically use and analyze a Bluetooth low energy (BLE) signal. We have conducted experiments of ICE-MoCha in a real crowd event as well as controlled indoor and outdoor lab environments. The results show the feasibility of ICE-MoCha detecting the mobile crowd characteristics in real-time, indicating it can effectively help the crowd management tasks to avoid potential crowd movement related incidents.
topic crowd safety management
Bluetooth low energy (BLE)
Internet of Things (IoT)
RSSI
mobility
url https://www.mdpi.com/1424-8220/19/5/1025
work_keys_str_mv AT abdohjabbari icemochaintelligentcrowdengineeringusingmobilitycharacterizationandanalytics
AT khalidjalmalki icemochaintelligentcrowdengineeringusingmobilitycharacterizationandanalytics
AT baekyoungchoi icemochaintelligentcrowdengineeringusingmobilitycharacterizationandanalytics
AT sejunsong icemochaintelligentcrowdengineeringusingmobilitycharacterizationandanalytics
_version_ 1725097552149217280