Fire and disaster detection with multimodal quadcopter By machine learning
Date
2023-03Publisher
Brac UniversityAuthor
Afrin, AnikaRahman, Md Moshiour
Chowdhury, Ayash Hossain
Eshraq, Mirza
Ukasha, Mehvish Rahman
Metadata
Show full item recordAbstract
Our thesis research is consisted of developing a model that can detect early fires
and, mapping the area for fire and disaster detection using a UAV (Unmanned
Aerial Vehicle) or quadcopter if a fire break out. Furthermore, MLP uses fire or
no fire detection, sound analysis, and input sensor to create a multimodal system
architecture. First, surveillance cameras detects the early stages of a fire using
luminous smoke and textured flame. However, if the fire has already started, an
alarm will sound, activating the quadcopter operation. Due to the quadcopter’s
camera and sound system input, it obtains an aerial perspective and maps the fireaffected region while indicating human life. Finally, disaster detection provides us
with a map indicating the safe zone where the less damaged part of the building will
assist the fire department in saving human lives. The unique aspect of our thesis is
that it designs a complete fire detection and rescue model. It will effectively detect
a fire before an incident occurs and map the fire-affected region after the incident
with human life signs and the safest path to rescue. The main goal here is to prevent
or mitigate damage by immediately alerting the fire department. We have collected
primary dataset of Fire and Disaster. Moreover, we increased the accuracy of our
fire dataset to 80.32% and increased the accuracy of our disaster dataset to 9.2%.
We tried to reduce the false detection of fire. Added to that, we have integrated all
the five models in graphical user interface.