ForestProtector: An IoT Architecture Integrating Machine Vision and Deep Reinforcement Learning for Efficient Wildfire Monitoring
- URL: http://arxiv.org/abs/2501.09926v1
- Date: Fri, 17 Jan 2025 02:47:14 GMT
- Title: ForestProtector: An IoT Architecture Integrating Machine Vision and Deep Reinforcement Learning for Efficient Wildfire Monitoring
- Authors: Kenneth Bonilla-Ormachea, Horacio Cuizaga, Edwin Salcedo, Sebastian Castro, Sergio Fernandez-Testa, Misael Mamani,
- Abstract summary: Early detection of forest fires is crucial to minimizing the environmental and socioeconomic damage they cause.
Existing fire detection systems are often expensive and require human intervention, making continuous monitoring of large areas impractical.
This work proposes a low-cost forest fire detection system that utilizes a central gateway device with computer vision capabilities to monitor a 360deg field of view for smoke at long distances.
- Score: 0.9423257767158634
- License:
- Abstract: Early detection of forest fires is crucial to minimizing the environmental and socioeconomic damage they cause. Indeed, a fire's duration directly correlates with the difficulty and cost of extinguishing it. For instance, a fire burning for 1 minute might require 1 liter of water to extinguish, while a 2-minute fire could demand 100 liters, and a 10-minute fire might necessitate 1,000 liters. On the other hand, existing fire detection systems based on novel technologies (e.g., remote sensing, PTZ cameras, UAVs) are often expensive and require human intervention, making continuous monitoring of large areas impractical. To address this challenge, this work proposes a low-cost forest fire detection system that utilizes a central gateway device with computer vision capabilities to monitor a 360{\deg} field of view for smoke at long distances. A deep reinforcement learning agent enhances surveillance by dynamically controlling the camera's orientation, leveraging real-time sensor data (smoke levels, ambient temperature, and humidity) from distributed IoT devices. This approach enables automated wildfire monitoring across expansive areas while reducing false positives.
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