Crowd-Auto - Locating Theft Vehicles Through Urban Crowdsensing

  • Alessandro Baldi UFES
  • Vinícius F. S. Mota UFES
  • Celso A. S. Santos UFES

Resumo


Several cities around the world face security problems, such as vehicle theft. Locate and recover these vehicles are challengers for authorities. In smart cities, citizens can collaborate with authorities by sensing urban and environmental data, so-called crowdsensing. This work introduces Crowd-Auto, a crowdsensing approach that utilizes a crowded camera network from houses and commerce to identify vehicle plates, query on official databases and inform the authorities when stolen vehicles are identified. We've developed a prototype and demonstrated that Crowd-Auto is viable for allowing citizens to cooperate and improve security in cities.
Palavras-chave: Camera, Internet of Things, Crowdsensing, Smart cities
Publicado
30/11/2020
Como Citar

Selecione um Formato
BALDI, Alessandro; MOTA, Vinícius F. S.; SANTOS, Celso A. S.. Crowd-Auto - Locating Theft Vehicles Through Urban Crowdsensing. In: SIMPÓSIO BRASILEIRO DE SISTEMAS MULTIMÍDIA E WEB (WEBMEDIA), 1. , 2020, Evento Online. Anais [...]. Porto Alegre: Sociedade Brasileira de Computação, 2020 . p. 293-296.

Artigos mais lidos do(s) mesmo(s) autor(es)

1 2 > >>