Detecting high indoor crowd density with Wi-Fi localization: a statistical mechanics approach

Autor: Rena Bakhshi, Philip Rutten, Michael Lees, Sonja Georgievska, Sander Klous, Jan Amoraal, Ben L. de Vries, Elena Ranguelova
Přispěvatelé: Computational Science Lab (IVI, FNWI), System and Network Engineering (IVI, FNWI), Computer Systems Architecture (IVI, FNWI), Faculty of Science
Rok vydání: 2019
Předmět:
lcsh:Computer engineering. Computer hardware
Information Systems and Management
Crowd density estimation
bepress|Engineering
Computer Networks and Communications
Computer science
media_common.quotation_subject
Big data
Real-time computing
bepress|Engineering|Operations Research
Systems Engineering and Industrial Engineering|Operational Research

lcsh:TK7885-7895
02 engineering and technology
Big data analytics
lcsh:QA75.5-76.95
Probabilistic modeling
bepress|Engineering|Computational Engineering
bepress|Engineering|Electrical and Computer Engineering
020204 information systems
0202 electrical engineering
electronic engineering
information engineering

Computational Science and Engineering
engrXiv|Engineering|Operations Research
Systems Engineering and Industrial Engineering|Operational Research

media_common
bepress|Engineering|Electrical and Computer Engineering|Signal Processing
engrXiv|Engineering|Electrical and Computer Engineering|Signal Processing
lcsh:T58.5-58.64
lcsh:Information technology
engrXiv|Engineering|Computer Engineering
MAC address
Network packet
business.industry
engrXiv|Engineering|Computer Engineering|Digital Communications and Networking
Statistical model
Statistical mechanics
Ambiguity
Indoor Wi-Fi localization
engrXiv|Engineering|Operations Research
Systems Engineering and Industrial Engineering

bepress|Engineering|Operations Research
Systems Engineering and Industrial Engineering

engrXiv|Engineering
bepress|Engineering|Computer Engineering|Digital Communications and Networking
Hardware and Architecture
engrXiv|Engineering|Computational Engineering
engrXiv|Engineering|Electrical and Computer Engineering
020201 artificial intelligence & image processing
lcsh:Electronic computers. Computer science
Crowd density
business
bepress|Engineering|Computer Engineering
Information Systems
Zdroj: Journal of Big Data, 6:31. Springer Open
Journal of Big Data, Vol 6, Iss 1, Pp 1-23 (2019)
ISSN: 2196-1115
DOI: 10.1186/s40537-019-0194-3
Popis: We address the problem of detecting highly raised crowd density in situations such as indoor dance events.We propose a new method for estimating crowd density by anonymous, non-participatory, indoor Wi-Fi localization of smart phones. Using a probabilistic model inspired by statistical mechanics, and relying only on big data analytics, we tackle three challenges: (1) the ambiguity of Wi-Fi based indoor positioning, which appears regardless of whether the latter is performed with machine learning or with optimization, (2) the MAC address randomization when a device is not connected, and (3) the volatility of packet interarrival times. The main result is that our estimation becomes more -- rather than less -- accurate when the crowd size increases. This property is crucial for detection of dangerous crowd density.
Databáze: OpenAIRE