Abstract

Autonomous unmanned aerial vehicles work seamlessly within the GPS signal range, but their performance deteriorates in GPS-denied regions. This paper presents a unique collaborative computer vision-based approach for target tracking as per the image’s specific location of interest. The proposed method tracks any object without considering its properties like shape, color, size, or pattern. It is required to keep the target visible and line of sight during the tracking. The method gives freedom of selection to a user to track any target from the image and form a formation around it. We calculate the parameters like distance and angle from the image center to the object for the individual drones. Among all the drones, the one with a significant GPS signal strength or nearer to the target is chosen as the master drone to calculate the relative angle and distance between an object and other drones considering approximate Geo-location. Compared to actual measurements, the results of tests done on a quadrotor UAV frame achieve 99% location accuracy in a robust environment inside the exact GPS longitude and latitude block as GPS-only navigation methods. The individual drones communicate to the ground station through a telemetry link. The master drone calculates the parameters using data collected at ground stations. Various formation flying methods help escort other drones to meet the desired objective with a single high-resolution first-person view (FPV) camera. The proposed method is tested for Airborne Object Target Tracking (AOT) aerial vehicle model and achieves higher tracking accuracy.

Highlights

  • Images captured by individual drones are analyzed and parameters for the same are estimated

  • The target coordinates are estimated concerning drone position obtained from the ground station

  • Region Of Interest (RoI)-based target selection is free from the fixed color, shape, or pattern-based target tracking

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. A survey conducted on computer vision for aerial vehicles [1] refers to different navigation methods like visual localization and mapping with three-dimensional (3D) modeling, obstacle detection, and aerial target tracking. Such computer vision-based systems force drones and surveillance systems to increase the ease and accuracy of reliable output. A computer vision-based navigation method suggested by Kim et al selects the region of interest and tracks to navigate the drone in GPS navigation denied-areas for surveillance missions [9] with an onboard aerial camera facing downwards. The proposed method is a solution for multiple UAV navigation and surveillance in unexplored areas that employs a selective target tracking computer vision-based technology that is cost-effective and precise.

LiDAR-Vision Sensor Comparison for Localization and Area Mapping
11 W to 25 W good lighting condition with texture rich environment
Proposed Multi-Drone Navigation System Algorithm for Object Tracking
Interface between an Embedded Board and an Open-Source Flight Controller Unit
Results and Analysis
Distance and Angle Parameters Measurement over Collected Frames
Comparison of Proposed Method to State-of-the-Art Methods
Conclusions and Future Work
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