Review on Action Recognition for Accident Detection in Smart City
Transportation Systems
- URL: http://arxiv.org/abs/2208.09588v1
- Date: Sat, 20 Aug 2022 03:21:44 GMT
- Title: Review on Action Recognition for Accident Detection in Smart City
Transportation Systems
- Authors: Victor Adewopo, Nelly Elsayed, Zag ElSayed, Murat Ozer, Ahmed
Abdelgawad, Magdy Bayoumi
- Abstract summary: Monitoring traffic flows in a smart city using different surveillance cameras can play a significant role in recognizing accidents and alerting first responders.
The utilization of action recognition (AR) in computer vision tasks has contributed towards high-precision applications in video surveillance, medical imaging, and digital signal processing.
This paper provides potential research direction to develop and integrate accident detection systems for autonomous cars and public traffic safety systems.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Action detection and public traffic safety are crucial aspects of a safe
community and a better society. Monitoring traffic flows in a smart city using
different surveillance cameras can play a significant role in recognizing
accidents and alerting first responders. The utilization of action recognition
(AR) in computer vision tasks has contributed towards high-precision
applications in video surveillance, medical imaging, and digital signal
processing. This paper presents an intensive review focusing on action
recognition in accident detection and autonomous transportation systems for a
smart city. In this paper, we focused on AR systems that used diverse sources
of traffic video capturing, such as static surveillance cameras on traffic
intersections, highway monitoring cameras, drone cameras, and dash-cams.
Through this review, we identified the primary techniques, taxonomies, and
algorithms used in AR for autonomous transportation and accident detection. We
also examined data sets utilized in the AR tasks, identifying the main sources
of datasets and features of the datasets. This paper provides potential
research direction to develop and integrate accident detection systems for
autonomous cars and public traffic safety systems by alerting emergency
personnel and law enforcement in the event of road accidents to minimize human
error in accident reporting and provide a spontaneous response to victims
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