Litcius/Paper detail

Monocular‐based collision avoidance system for unmanned aerial vehicle

Abdulrahman Javaid, Asaad A. Alduais, M. Hashem Shullar, Uthman Baroudi, Mustafa Al-Naser

2023IET Smart Cities13 citationsDOIOpen Access PDF

Abstract

Abstract Obstacle avoidance based on a monocular camera is a challenging task due to the lack of 3D information for Unmanned Aerial Vehicle. Recent methods based on Convolutional Neural Networks for monocular depth estimation and obstacle detection become widely used. However, collision avoidance with depth estimation usually suffers from long computational time and low avoidance success rate. A new collision avoidance system is proposed which uses monocular camera and intelligent algorithm to avoid obstacles on real time processing. Several experiments have been conducted on crowded environments with several object types. The results show outstanding performance in terms of obstacles avoidance and system response time compared to contemporary approaches. This makes the proposed approach of high potential to be integrated in crowded environments.

Topics & Concepts

Collision avoidanceMonocularObstacle avoidanceArtificial intelligenceComputer visionComputer scienceObstacleMonocular visionCollision avoidance systemTask (project management)Convolutional neural networkReal-time computingCollisionEngineeringRobotMobile robotGeographyComputer securityArchaeologySystems engineeringAdvanced Vision and ImagingRobotics and Sensor-Based LocalizationVideo Surveillance and Tracking Methods