A Low-Cost Multi-Agent System for Physical Security in Smart Buildings
- URL: http://arxiv.org/abs/2209.00741v1
- Date: Thu, 1 Sep 2022 22:20:39 GMT
- Title: A Low-Cost Multi-Agent System for Physical Security in Smart Buildings
- Authors: Tiago Fonseca, Tiago Dias, Jo\~ao Vitorino, Lu\'is Lino Ferreira,
Isabel Pra\c{c}a
- Abstract summary: Integrated Physical Security System (IP2S) is a multi-agent system capable of coordinating diverse Internet of Things (IoT) sensors and actuators.
The proposed system was tested in a live case study that combined fire and intrusion detection in an industrial shop floor environment with four different sectors.
- Score: 0.08999666725996971
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Modern organizations face numerous physical security threats, from fire
hazards to more intricate concerns regarding surveillance and unauthorized
personnel. Conventional standalone fire and intrusion detection solutions must
be installed and maintained independently, which leads to high capital and
operational costs. Nonetheless, due to recent developments in smart sensors,
computer vision techniques, and wireless communication technologies, these
solutions can be integrated in a modular and low-cost manner. This work
introduces Integrated Physical Security System (IP2S), a multi-agent system
capable of coordinating diverse Internet of Things (IoT) sensors and actuators
for an efficient mitigation of multiple physical security events. The proposed
system was tested in a live case study that combined fire and intrusion
detection in an industrial shop floor environment with four different sectors,
two surveillance cameras, and a firefighting robot. The experimental results
demonstrate that the integration of several events in a single automated system
can be advantageous for the security of smart buildings, reducing false alarms
and delays.
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