Reducing Object Detection Uncertainty from RGB and Thermal Data for UAV Outdoor Surveillance
Juan Sandino, Peter A. Caccetta, Conrad Sanderson, Frederic Maire,, Felipe Gonzalez

TL;DR
This paper introduces a probabilistic motion planning framework for small UAVs that reduces object detection uncertainty in outdoor surveillance, demonstrated through real flight tests for victim localization in search and rescue scenarios.
Contribution
It presents a novel POMDP-based motion planning approach using ABT and TAPIR toolkit to improve autonomous UAV navigation under detection uncertainty in outdoor environments.
Findings
Enhanced victim localization accuracy in real flight tests.
Reduced false positives in object detection during UAV surveillance.
Effective real-time onboard implementation of the probabilistic planner.
Abstract
Recent advances in Unmanned Aerial Vehicles (UAVs) have resulted in their quick adoption for wide a range of civilian applications, including precision agriculture, biosecurity, disaster monitoring and surveillance. UAVs offer low-cost platforms with flexible hardware configurations, as well as an increasing number of autonomous capabilities, including take-off, landing, object tracking and obstacle avoidance. However, little attention has been paid to how UAVs deal with object detection uncertainties caused by false readings from vision-based detectors, data noise, vibrations, and occlusion. In most situations, the relevance and understanding of these detections are delegated to human operators, as many UAVs have limited cognition power to interact autonomously with the environment. This paper presents a framework for autonomous navigation under uncertainty in outdoor scenarios for…
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