z-logo
open-access-imgOpen Access
UTILIZANDO PROCESSAMENTO DE IMAGENS E YOLO PARA A CONSTRUÇÃO DE UM SISTEMA DE NAVEGAÇÃO DE UM DRONE COM APLICAÇÃO EM UMA INDÚSTRIA
Author(s) -
João Vitor Sabino,
Francisco Assis da Silva,
Leandro Luiz de Almeida,
Danillo Roberto Pereira,
Almir Olivette Artero
Publication year - 2021
Publication title -
colloquium exactarum
Language(s) - English
Resource type - Journals
ISSN - 2178-8332
DOI - 10.5747/ce.2021.v13.n4.e375
Subject(s) - drone , computer science , decoding methods , artificial intelligence , code (set theory) , artificial neural network , computer vision , real time computing , telecommunications , genetics , set (abstract data type) , biology , programming language
In this work we developed a semi-autonomous drone navigation system for a cardboard box industry, to assist in counting the stock of cardboard reels. The developed methodology has four main steps, being the QR Code decoding, optical marker detection, navigation system and drone movement. For the QR Code decoding step, the pyzbar library was used. In the optical marker detection step, the YOLOv4 Tiny library was used, which uses machine learning techniques to detect objects in real time. YOLOv4 Tiny was trained using a custom dataset with images of optical markers and labels in a closed simulation environment, achieving a hit rate of 92.10%. The navigation system step is fed by the response of the neural network, in which each marker has a function associated with it. The last step depends on the navigation system, since it sends which command the drone must follow and the movement sends this command to the drone.

The content you want is available to Zendy users.

Already have an account? Click here to sign in.
Having issues? You can contact us here