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FireVision: An Early Fire and Smoke Detection Platform Utilizing Mask R-CNN Deep Learning Inferences
by
Konstantinidou, Myrto
, Spanoudaki, Konstantina
, Tsoumani, Meropi
, Kokkonis, George
, Karolos, Ion Anastasios
, Kontogiannis, Sotirios
in
Accuracy
/ Agricultural production
/ Architecture
/ Artificial neural networks
/ Criticality aspects
/ Deep learning
/ drone flight algorithm
/ Drones
/ Edge computing
/ ensemble learning
/ False alarms
/ Fire detection
/ fire detection system
/ Graphics processing units
/ Humidity
/ Image resolution
/ Inference
/ instance segmentation
/ Localization
/ Machine learning
/ object detection
/ Real time
/ Satellites
/ Sensors
/ Surveillance
/ VOCs
/ Volatile organic compounds
2026
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FireVision: An Early Fire and Smoke Detection Platform Utilizing Mask R-CNN Deep Learning Inferences
by
Konstantinidou, Myrto
, Spanoudaki, Konstantina
, Tsoumani, Meropi
, Kokkonis, George
, Karolos, Ion Anastasios
, Kontogiannis, Sotirios
in
Accuracy
/ Agricultural production
/ Architecture
/ Artificial neural networks
/ Criticality aspects
/ Deep learning
/ drone flight algorithm
/ Drones
/ Edge computing
/ ensemble learning
/ False alarms
/ Fire detection
/ fire detection system
/ Graphics processing units
/ Humidity
/ Image resolution
/ Inference
/ instance segmentation
/ Localization
/ Machine learning
/ object detection
/ Real time
/ Satellites
/ Sensors
/ Surveillance
/ VOCs
/ Volatile organic compounds
2026
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FireVision: An Early Fire and Smoke Detection Platform Utilizing Mask R-CNN Deep Learning Inferences
by
Konstantinidou, Myrto
, Spanoudaki, Konstantina
, Tsoumani, Meropi
, Kokkonis, George
, Karolos, Ion Anastasios
, Kontogiannis, Sotirios
in
Accuracy
/ Agricultural production
/ Architecture
/ Artificial neural networks
/ Criticality aspects
/ Deep learning
/ drone flight algorithm
/ Drones
/ Edge computing
/ ensemble learning
/ False alarms
/ Fire detection
/ fire detection system
/ Graphics processing units
/ Humidity
/ Image resolution
/ Inference
/ instance segmentation
/ Localization
/ Machine learning
/ object detection
/ Real time
/ Satellites
/ Sensors
/ Surveillance
/ VOCs
/ Volatile organic compounds
2026
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FireVision: An Early Fire and Smoke Detection Platform Utilizing Mask R-CNN Deep Learning Inferences
Journal Article
FireVision: An Early Fire and Smoke Detection Platform Utilizing Mask R-CNN Deep Learning Inferences
2026
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Overview
This paper presents FireVision, an innovative platform and model for real-time fire detection and monitoring. The platform utilizes automated drone flights to collect high-resolution imagery in both suburban and forested settings. Ensemble deep learning inference, based on Mask R-CNN weak learners, is employed to trigger alerts. Detection performance is further enhanced by integrating ResNet-50, ResNet-101, and ResNet-152 classifiers, which can be deployed in the cloud or on the drone’s edge co-processing units. Additionally, a fire criticality index is introduced, leveraging detection bounds and masks to assess the severity of fire events, alongside an automated drone path-planning algorithm for identifying critical fire incidents. Experiments were conducted using a supervised, mask-annotated dataset to evaluate model accuracy and inference speed across various cloud and edge computing configurations. Results indicate that ResNet-101 surpasses ResNet-50 by 5 to 12.5 percent in mAP@0.5 mask accuracy, with an 18 percent increase in inference time on the cloud and a 27 percent increase on the drone edge device GPU. In comparison, ResNet-152 achieves a 0.5 to 1.2 percent improvement in mAP@0.5 over ResNet-101, but its inference time is nine times slower in the cloud and 1.3 times slower on the GPU.
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