Please use this identifier to cite or link to this item: https://dspace.mnau.edu.ua/jspui/handle/123456789/12580
Title: Improving the Model of Object Detection on Aerial Photographs and Video in Unmanned Aerial Systems
Authors: Самойленко, Микола Олександрович
Samoylenko, Mykola
Кравченко, Олена Олександрівна
Kravchenko, Helen
Калиниченко, Галина Іванівна
Kalinichenko, Galina
Keywords: microsoft coco
neural network
object detection
unmanned aerial system
Visdrone 2021
Yolov5x
object detection
deep learning
IOU
Mathematics: Applied Mathematics
Engineering: Industrial and Manufacturing Engineering
Business, Management and Accounting: Management of Technology and Innovation
Engineering: Mechanical Engineering
Agricultural and Biological Sciences: Food Science
Energy: Energy Engineering and Power Technology
Engineering: Control and Systems Engineering
Computer Science: Computer Science Applications
Engineering: Electrical and Electronic Engineering
Environmental Science: Environmental Chemistry
Issue Date: 2022
Publisher: Mykolayiv National Agrarian University
Central Scientific Research Institute of Armament and Military Equipment of the Armed Forces of Ukraine
National Technical University «Kharkiv Polytechnic Institute»
Citation: Slyusar, V., Protsenko, M., Chernukha, A., Melkin, V., Biloborodov, O., Samoilenko, M., . . . Soloshchuk, M. (2022). Improving the Model of Object Detection on Aerial Photographs and Video in Unmanned Aerial Systems. Eastern-European Journal of Enterprise Technologies, 1(9-115), 24-34. doi:10.15587/1729-4061.2022.252876
Abstract: This paper considers a model of object detection on aerial photographs and video using a neural network in unmanned aerial systems. The development of artificial intelligence and computer vision systems for unmanned systems (drones, robots) requires the improvement of models for detecting and recognizing objects in images and video streams. The results of video and aerial photography in unmanned aircraft systems are processed by the operator manually but there are objective difficulties associated with the operator’s processing of a large number of videos and aerial photographs, so it is advisable to automate this process. Analysis of neural network models has revealed that the YOLOv5x model (USA) is most suitable, as a basic model, for performing the task of object detection on aerial photographs and video. The Microsoft COCO suite (USA) is used to train this model. This set contains more than 200,000 images across 80 categories. To improve the YOLOv5x model, the neural network was trained with a set of VisDrone 2021 images (China) with the choice of such optimal training parameters as the optimization algorithm SGD; the initial learning rate (step) of 0.0005; the number of epochs of 25. As a result, a new model of object detection on aerial photographs and videos with the proposed name VisDroneYOLOv5x was obtained. The effectiveness of the improved model was studied using aerial photographs and videos from the VisDrone 2021 set. To assess the effectiveness of the model, the following indicators were chosen as the main indicators: accuracy, sensitivity, the estimation of average accuracy. Using a convolutional neural network has made it possible to automate the process of object detection on aerial photographs and video in unmanned aerial systems.
URI: https://dspace.mnau.edu.ua/jspui/handle/123456789/12580
Appears in Collections:Публікації науково-педагогічних працівників МНАУ у БД Scopus
Статті (Факультет агротехнологій)
Статті (Факультет ТВППТСБ)

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