Back to Search Start Over

Laser-based drone vision disruption with a real-time tracking system for privacy preservation.

Authors :
Kuantama, Endrowednes
Zhang, Yihao
Rahman, Faiyaz
Han, Richard
Dawes, Judith
Mildren, Rich
Abir, Tasnim Azad
Nguyen, Phuc
Source :
Expert Systems with Applications. Dec2024:Part B, Vol. 255, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

The capabilities of drones are increasing every day, as is the ease with which civilians can buy and fly them. Most drones are equipped with a camera that is used by a point-of-view operator and, at the same time, can be used for image capture. The use of drones creates a threat to privacy whereby anyone who can fly a drone can take pictures without permission. This study aims to create a 2-axis tracker system that can recognize a drone and locate the position of the drone camera so that a laser beam can track and dazzle the drone camera. The depth-sensing camera is used to localize the part of the target corresponding to the drone's camera and is created using the YOLOv5 algorithm as a deep-learning detector model. The drone's camera range and position are challenging to detect due to its small size. Our adaptive detection method combines drone detection and drone camera detection. The depth-sensing camera provides input in the form of a three-coordinate axis from the target. If only the drone is detected, a predictive algorithm can determine the camera's position for illumination with the laser. Alternatively, if the drone camera is detected, the laser can follow the target's movement more quickly. In this study, a green (520 nm) laser module with adjustable power is used to investigate factors that affect the dazzling range. The computer vision detection algorithm can detect and localize the position of the drone camera up to 500 cm with a confidence level of more than 65%. If the target is in the center of the field of view, the accuracy of the target position can reach 98%. The tracker can follow the drone's movement from 2 m/s to 4 m/s with a maximum error of 1.9 cm from the center point of the drone camera for close range. For long range, the maximum error is 6.2 cm. A laser power of 23.5 mW at 500 cm distance is found to be sufficient to dazzle and track drone cameras. • Drone and drone camera detection based on depth-sensing camera and YOLOv5 algorithm. • The 2-axis real-time tracking system recognizes a drone and locates the position of the drone camera. • Vision disruption based on laser dazzling. • The adaptive detection method combines drone detection and drone camera detection. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09574174
Volume :
255
Database :
Academic Search Index
Journal :
Expert Systems with Applications
Publication Type :
Academic Journal
Accession number :
178999079
Full Text :
https://doi.org/10.1016/j.eswa.2024.124626