A Residual Variance Matching Recursive Least Squares Filter for Real-time UAV Terrain Following
By: Xiaobo Wu, Youmin Zhang
Accurate real-time waypoints estimation for the UAV-based online Terrain Following during wildfire patrol missions is critical to ensuring flight safety and enabling wildfire detection. However, existing real-time filtering algorithms struggle to maintain accurate waypoints under measurement noise in nonlinear and time-varying systems, posing risks of flight instability and missed wildfire detections during UAV-based terrain following. To address this issue, a Residual Variance Matching Recursive Least Squares (RVM-RLS) filter, guided by a Residual Variance Matching Estimation (RVME) criterion, is proposed to adaptively estimate the real-time waypoints of nonlinear, time-varying UAV-based terrain following systems. The proposed method is validated using a UAV-based online terrain following system within a simulated terrain environment. Experimental results show that the RVM-RLS filter improves waypoints estimation accuracy by approximately 88$\%$ compared with benchmark algorithms across multiple evaluation metrics. These findings demonstrate both the methodological advances in real-time filtering and the practical potential of the RVM-RLS filter for UAV-based online wildfire patrol.
Similar Papers
UAV-VLRR: Vision-Language Informed NMPC for Rapid Response in UAV Search and Rescue
Robotics
Drone finds lost people much faster in emergencies.
Predictive Uncertainty for Runtime Assurance of a Real-Time Computer Vision-Based Landing System
CV and Pattern Recognition
Helps planes land safely using cameras.
UAV-VL-R1: Generalizing Vision-Language Models via Supervised Fine-Tuning and Multi-Stage GRPO for UAV Visual Reasoning
CV and Pattern Recognition
Helps drones understand pictures faster and better.