Robust Subpixel Localization of Diagonal Markers in Large-Scale Navigation via Multi-Layer Screening and Adaptive Matching
By: Jing Tao , Banglei Guan , Yang Shang and more
This paper proposes a robust, high-precision positioning methodology to address localization failures arising from complex background interference in large-scale flight navigation and the computational inefficiency inherent in conventional sliding window matching techniques. The proposed methodology employs a three-tiered framework incorporating multi-layer corner screening and adaptive template matching. Firstly, dimensionality is reduced through illumination equalization and structural information extraction. A coarse-to-fine candidate selection strategy minimizes sliding window computational costs, enabling rapid estimation of the marker's position. Finally, adaptive templates are generated for candidate points, achieving subpixel precision through improved template matching with correlation coefficient extremum fitting. Experimental results demonstrate the method's effectiveness in extracting and localizing diagonal markers in complex, large-scale environments, making it ideal for field-of-view measurement in navigation tasks.
Similar Papers
Stereovision Image Processing for Planetary Navigation Maps with Semi-Global Matching and Superpixel Segmentation
Instrumentation and Methods for Astrophysics
Helps Mars rovers see and map tricky ground.
Reflection-Based Relative Localization for Cooperative UAV Teams Using Active Markers
Robotics
Drones use reflections to find each other better.
Fast Marker Detection for UV-Based Visual Relative Localisation in Agile UAV Swarms
Robotics
Helps drone swarms find each other super fast.