Object detection in inland vessels using combined trained and pretrained models of YOLO8
Abstract —One of the main challenges in computer vision is object detection, which entails both locating and identifying specific items on an image. With a fresh perspective, the YOLO (You Only Look Once) algorithm was developed in 2015 and performs object detection in a single neural network. That...
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Published in | Advances in Computing and Engineering Vol. 3; no. 2; pp. 64 - 117 |
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Main Authors | , , , , |
Format | Journal Article |
Language | English |
Published |
Academy Publishing Center
20.11.2023
|
Online Access | Get full text |
ISSN | 2735-5977 2735-5985 |
DOI | 10.21622/ACE.2023.03.2.064 |
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Abstract | Abstract —One of the main challenges in computer vision is
object detection, which entails both locating and identifying
specific items on an image. With a fresh perspective, the YOLO
(You Only Look Once) algorithm was developed in 2015 and
performs object detection in a single neural network. That caused
the field of object detection to explode and produce considerably
more amazing achievements than it had a decade before. So far,
YOLO has been improved to eight versions and rated as one
of the top object identification algorithms. This is thanks to its
combination with many of the most cutting-edge concepts being
explored in the computer vision research field. The most recent
version of YOLO, known as YOLOv8, performs better than the
YOLOv7 and YOLO5 in terms of accuracy and speed, though.
This paper examines the most recent developments in computer
vision that were incorporated into YOLOv5,YOLO7 and YOLO8
and its predecessors.
Index Terms —Object Detection, YOLO, Autonomous Vehicles,
Inland Waterway Vessels, Bounded Boxes, Neural Network, CNN.
Received: 14 June 2023 Accepted: 11 September 2023 Published: 20 November 2023 |
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AbstractList | Abstract —One of the main challenges in computer vision is
object detection, which entails both locating and identifying
specific items on an image. With a fresh perspective, the YOLO
(You Only Look Once) algorithm was developed in 2015 and
performs object detection in a single neural network. That caused
the field of object detection to explode and produce considerably
more amazing achievements than it had a decade before. So far,
YOLO has been improved to eight versions and rated as one
of the top object identification algorithms. This is thanks to its
combination with many of the most cutting-edge concepts being
explored in the computer vision research field. The most recent
version of YOLO, known as YOLOv8, performs better than the
YOLOv7 and YOLO5 in terms of accuracy and speed, though.
This paper examines the most recent developments in computer
vision that were incorporated into YOLOv5,YOLO7 and YOLO8
and its predecessors.
Index Terms —Object Detection, YOLO, Autonomous Vehicles,
Inland Waterway Vessels, Bounded Boxes, Neural Network, CNN.
Received: 14 June 2023 Accepted: 11 September 2023 Published: 20 November 2023 |
Author | Goudah, Ahmad A. El-Habrouk, Mohmed Schramm, Dieter Jarofka, Maximilian Dessouky, Yasser G. |
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Snippet | Abstract —One of the main challenges in computer vision is
object detection, which entails both locating and identifying
specific items on an image. With a... |
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Title | Object detection in inland vessels using combined trained and pretrained models of YOLO8 |
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