Enhancing Target Tracking: A Novel Grid-Based Beetle Antennae Search Algorithm and Confusion-Aware Detection
Yixuan Lu, Chencong Ma, Dechao Chen

TL;DR
This paper introduces a new algorithm for drone target tracking that improves efficiency and accuracy by using a grid-based search and a confusion-aware detection system.
Contribution
A novel grid-based beetle antennae search algorithm and a confusion-aware detection mechanism are proposed for efficient and robust target tracking.
Findings
The grid-based beetle antennae search algorithm outperforms four mainstream algorithms in convergence speed and path efficiency.
The confusion-aware mechanism effectively distinguishes confusing targets and meets real-time requirements.
The proposed algorithm achieves a 233% speed improvement over previous work in non-local extreme-value-area environments.
Abstract
Unmanned aerial vehicle target tracking is a complex task that encounters challenges in scenarios involving limited computing resources, real-time requirements, and target confusion. This research builds on previous work and addresses challenges by proposing a grid-based beetle antennae search algorithm and designing a lightweight multi-target detection and positioning method, which integrates interference-sensing mechanisms and depth information. First, the grid-based beetle antennae search algorithm’s rapid convergence advantage is combined with a secondary search and rollback mechanism, enhancing its search efficiency and ability to escape local extreme areas. Then, the You Only Look Once (version 8) model is employed for target detection, while corner detection, feature point extraction, and dictionary matching introduce a confusion-aware mechanism. This mechanism effectively…
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Taxonomy
TopicsUAV Applications and Optimization · Advanced Image and Video Retrieval Techniques · Robotics and Sensor-Based Localization
