Thermal RGB Fusion for Micro-UAV Wildfire Perimeter Tracking with Minimal Comms
By: Ercan Erkalkan, Vedat Topuz, Ayça Ak
Potential Business Impact:
Drones map wildfires faster with less data.
This study introduces a lightweight perimeter tracking method designed for micro UAV teams operating over wildfire environments under limited bandwidth conditions. Thermal image frames generate coarse hot region masks through adaptive thresholding and morphological refinement, while RGB frames contribute edge cues and suppress texture related false detections using gradient based filtering. A rule level merging strategy selects boundary candidates and simplifies them via the Ramer Douglas Peucker algorithm. The system incorporates periodic beacons and an inertial feedback loop that maintains trajectory stability in the presence of GPS degradation. The guidance loop targets sub 50 ms latency on embedded System on Chip (SoC) platforms by constraining per frame pixel operations and precomputing gradient tables. Small scale simulations demonstrate reductions in average path length and boundary jitter compared to a pure edge tracking baseline, while maintaining environmental coverage measured through intersection merge analysis. Battery consumption and computational utilization confirm the feasibility of achieving 10, 15 m/s forward motion on standard micro platforms. This approach enables rapid deployment in the field, requiring robust sensing and minimal communications for emergency reconnaissance applications.
Similar Papers
Method of UAV Inspection of Photovoltaic Modules Using Thermal and RGB Data Fusion
CV and Pattern Recognition
Finds broken solar panels faster and cheaper.
Through-Foliage Surface-Temperature Reconstruction for early Wildfire Detection
CV and Pattern Recognition
Find hidden fires under trees before they grow.
Millisecond-Response Tracking and Gazing System for UAVs: A Domestic Solution Based on "Phytium + Cambricon"
CV and Pattern Recognition
Spots moving things faster for cameras.