Visual image design of the internet of things based on AI intelligence

Visual object detection has emerged as a critical technology for Unmanned Arial Vehicle (UAV) use due to advances in computer vision. New developments in fields like communication technology and the UAV needs to be able to act autonomously by gathering data and then making choices. These tendencies...

Full description

Bibliographic Details
Main Author: Tian Tian
Format: Article
Language:English
Published: Elsevier 2023-12-01
Series:Heliyon
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2405844023100533
_version_ 1827577505594212352
author Tian Tian
author_facet Tian Tian
author_sort Tian Tian
collection DOAJ
description Visual object detection has emerged as a critical technology for Unmanned Arial Vehicle (UAV) use due to advances in computer vision. New developments in fields like communication technology and the UAV needs to be able to act autonomously by gathering data and then making choices. These tendencies have brought us to cutting-edge levels of health care, transportation, energy, monitoring, and security for visual image detection and manufacturing endeavors. These include coordination in communication via IoT, sustainability of IoT network, and optimization challenges in path planning. Because of their limited battery life, these gadgets are limited in their range of communication. UAVs can be seen as terminal devices connected to a large network where a swarm of other UAVs is coordinating their motions, directing one another, and maintaining watch over locations outside its visual range. One of the essential components of UAV-based applications is the ability to recognize objects of interest in aerial photographs taken by UAVs. While aerial photos might be useful, object detection is challenging. As a result, capturing aerial photographs with UAVs is a unique challenge since the size of things in these images might vary greatly. The study proposal included specific information regarding the Detection of Visual Images by UAVs (DVI-UAV) using the IoT and Artificial Intelligence (AI). Included in the study of AI is the concept of DSYolov3. The DSYolov3 model was presented to deal with these problems in the UAV industry. By fusing the channel-wise feature across multiple scales using a spatial pyramid pooling approach, the proposed study creates a novel module, Multi-scale Fusion of Channel Attention (MFCAM), for scale-variant object identification tasks. The method's effectiveness and efficiency have been thoroughly tested and evaluated experimentally. The suggested method would allow us to outperform most current detectors and guarantee that the models will be useable on UAVs. There will be a 95 % success rate in terms of visual image detection, a 94 % success rate in terms of computation cost, a 97 % success rate in terms of accuracy, and a 95 % success rate in terms of effectiveness.
first_indexed 2024-03-08T21:28:45Z
format Article
id doaj.art-ff3c1d6507ca4bb8a767be646d380e31
institution Directory Open Access Journal
issn 2405-8440
language English
last_indexed 2024-03-08T21:28:45Z
publishDate 2023-12-01
publisher Elsevier
record_format Article
series Heliyon
spelling doaj.art-ff3c1d6507ca4bb8a767be646d380e312023-12-21T07:34:51ZengElsevierHeliyon2405-84402023-12-01912e22845Visual image design of the internet of things based on AI intelligenceTian Tian0College of Fine Arts and Design, Mudanjiang Normal University, Mudanjiang, 157011, Heilongjiang, ChinaVisual object detection has emerged as a critical technology for Unmanned Arial Vehicle (UAV) use due to advances in computer vision. New developments in fields like communication technology and the UAV needs to be able to act autonomously by gathering data and then making choices. These tendencies have brought us to cutting-edge levels of health care, transportation, energy, monitoring, and security for visual image detection and manufacturing endeavors. These include coordination in communication via IoT, sustainability of IoT network, and optimization challenges in path planning. Because of their limited battery life, these gadgets are limited in their range of communication. UAVs can be seen as terminal devices connected to a large network where a swarm of other UAVs is coordinating their motions, directing one another, and maintaining watch over locations outside its visual range. One of the essential components of UAV-based applications is the ability to recognize objects of interest in aerial photographs taken by UAVs. While aerial photos might be useful, object detection is challenging. As a result, capturing aerial photographs with UAVs is a unique challenge since the size of things in these images might vary greatly. The study proposal included specific information regarding the Detection of Visual Images by UAVs (DVI-UAV) using the IoT and Artificial Intelligence (AI). Included in the study of AI is the concept of DSYolov3. The DSYolov3 model was presented to deal with these problems in the UAV industry. By fusing the channel-wise feature across multiple scales using a spatial pyramid pooling approach, the proposed study creates a novel module, Multi-scale Fusion of Channel Attention (MFCAM), for scale-variant object identification tasks. The method's effectiveness and efficiency have been thoroughly tested and evaluated experimentally. The suggested method would allow us to outperform most current detectors and guarantee that the models will be useable on UAVs. There will be a 95 % success rate in terms of visual image detection, a 94 % success rate in terms of computation cost, a 97 % success rate in terms of accuracy, and a 95 % success rate in terms of effectiveness.http://www.sciencedirect.com/science/article/pii/S2405844023100533Unmanned aerial vehiclesArtificial intelligenceVisual image detectionDSYolov3Internet of things
spellingShingle Tian Tian
Visual image design of the internet of things based on AI intelligence
Heliyon
Unmanned aerial vehicles
Artificial intelligence
Visual image detection
DSYolov3
Internet of things
title Visual image design of the internet of things based on AI intelligence
title_full Visual image design of the internet of things based on AI intelligence
title_fullStr Visual image design of the internet of things based on AI intelligence
title_full_unstemmed Visual image design of the internet of things based on AI intelligence
title_short Visual image design of the internet of things based on AI intelligence
title_sort visual image design of the internet of things based on ai intelligence
topic Unmanned aerial vehicles
Artificial intelligence
Visual image detection
DSYolov3
Internet of things
url http://www.sciencedirect.com/science/article/pii/S2405844023100533
work_keys_str_mv AT tiantian visualimagedesignoftheinternetofthingsbasedonaiintelligence