A Residual Variance Matching Recursive Least Squares Filter for Real-time UAV Terrain Following

Computer Vision & MultiModal AI
Published: arXiv: 2512.05918v1
Authors

Xiaobo Wu Youmin Zhang

Abstract

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.

Paper Summary

Problem
Wildfires pose a significant threat to the environment and human life. Unmanned aerial vehicles (UAVs) are being used for wildfire patrol to detect and respond to fires early. However, the accuracy of UAV-based online terrain following systems, which enable real-time terrain perception and path planning, can be degraded by sensor measurement errors and outliers. This can lead to reduced precision of waypoints and even threaten flight safety.
Key Innovation
Researchers have proposed a novel filter called the Residual Variance Matching Recursive Least Squares (RVM-RLS) filter. This filter is designed to adaptively estimate the real-time waypoints of nonlinear, time-varying UAV-based terrain following systems. It uses a Residual Variance Matching Estimation (RVME) criterion to guide its estimation and is robust to outliers.
Practical Impact
The RVM-RLS filter has the potential to significantly improve the accuracy of UAV-based online terrain following systems. By reducing the impact of sensor measurement errors and outliers, the filter can enhance the precision of waypoints and ensure flight safety. This is particularly important for wildfire patrol missions, where accurate and timely detection is crucial.
Analogy / Intuitive Explanation
Imagine you're navigating a car through a winding road in a dense forest. The RVM-RLS filter is like a sophisticated GPS system that can adapt to the changing terrain and adjust its route in real-time to avoid obstacles and stay on course. In this analogy, the sensor measurement errors and outliers are like unexpected roadblocks or potholes that the GPS system needs to navigate around to ensure accurate and safe navigation. The RVM-RLS filter is designed to handle these unexpected challenges and provide a more accurate and reliable navigation system.
Paper Information
Categories:
eess.SP cs.RO stat.ML
Published Date:

arXiv ID:

2512.05918v1

Quick Actions